CA3143665A1 - Systems and methods for improving content recommendations using a trained model - Google Patents
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- H—ELECTRICITY
- H04—ELECTRIC COMMUNICATION TECHNIQUE
- H04N—PICTORIAL COMMUNICATION, e.g. TELEVISION
- H04N21/00—Selective content distribution, e.g. interactive television or video on demand [VOD]
- H04N21/40—Client devices specifically adapted for the reception of or interaction with content, e.g. set-top-box [STB]; Operations thereof
- H04N21/45—Management operations performed by the client for facilitating the reception of or the interaction with the content or administrating data related to the end-user or to the client device itself, e.g. learning user preferences for recommending movies, resolving scheduling conflicts
- H04N21/466—Learning process for intelligent management, e.g. learning user preferences for recommending movies
- H04N21/4668—Learning process for intelligent management, e.g. learning user preferences for recommending movies for recommending content, e.g. movies
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- G06—COMPUTING OR CALCULATING; COUNTING
- G06N—COMPUTING ARRANGEMENTS BASED ON SPECIFIC COMPUTATIONAL MODELS
- G06N3/00—Computing arrangements based on biological models
- G06N3/02—Neural networks
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- H04N21/20—Servers specifically adapted for the distribution of content, e.g. VOD servers; Operations thereof
- H04N21/25—Management operations performed by the server for facilitating the content distribution or administrating data related to end-users or client devices, e.g. end-user or client device authentication, learning user preferences for recommending movies
- H04N21/251—Learning process for intelligent management, e.g. learning user preferences for recommending movies
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- H04N—PICTORIAL COMMUNICATION, e.g. TELEVISION
- H04N21/00—Selective content distribution, e.g. interactive television or video on demand [VOD]
- H04N21/40—Client devices specifically adapted for the reception of or interaction with content, e.g. set-top-box [STB]; Operations thereof
- H04N21/45—Management operations performed by the client for facilitating the reception of or the interaction with the content or administrating data related to the end-user or to the client device itself, e.g. learning user preferences for recommending movies, resolving scheduling conflicts
- H04N21/466—Learning process for intelligent management, e.g. learning user preferences for recommending movies
- H04N21/4662—Learning process for intelligent management, e.g. learning user preferences for recommending movies characterized by learning algorithms
- H04N21/4666—Learning process for intelligent management, e.g. learning user preferences for recommending movies characterized by learning algorithms using neural networks, e.g. processing the feedback provided by the user
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Abstract
Description
USING A TRAINED MODEL
Background [0001] The present disclosure is directed to systems and methods for providing media content recommendations, and in particular, for providing improved recommendations using a trained model.
Summary
The predefined set of training data may be agnostic of profile data. For example, the trained model may have been trained without bias to the preferences of a particular user.
The information corresponding to content consumption may also be referred to, herein, as content consumption data. In some embodiments, the information may include information about user activity corresponding to content consumption (i.e.
user activity data). In some embodiments, the information may include content metadata.
Content metadata may indicate time, location, content type, and/or content genre of consumed content. In some embodiments, the information may include control activity data.
Control activity data may indicate one or more control function selections made by a user while consuming content. For example, the activity data may indicate that a user enjoys listening to music associated with Game of Thrones during a weekend night at home. In some embodiments, the information may include information corresponding to portions of consumed content. For example, the activity data may include skipped scenes or repeated watching of a scene in Game of Thrones. In some embodiments, the information corresponding to content consumption may be associated with a profile.
For example, a user may have watched and enjoyed an action scene in a series such as Game of Thrones. The corresponding activity indicating enjoyment of watching the action scene may be received by the system and saved in a profile.
The system, using the personalized model, may determine the user might enjoy rewatching Game of Thrones after a year based on the activity data. The personalized model may be used to generate Game of Thrones for recommendation based on that determination.
For example, the recommendation, Lord of the Rings, may be provided and displayed on a user device. In some embodiments, the content recommendations may be a first set of content recommendations.
updated personalized model (or personalized model for the sake of brevity) based on the number of times the personalized model has been updated.
The personalized model may be generated based on the genre ranking. The system may use the updated model to generate content recommendations which are ordered based on the ranked themes.
For example, a user may have repeatedly watched an action scene from Game of Thrones.
The action scene may have been seven minutes and the user may have skipped the first two minutes of the scene. Action scenes of content may be generated and adjusted, for example, to a length of five minutes. The system may provide the adjusted scenes to a device.
system may generate and provide scene recommendations from Lord of the Rings and/or a similar series like Game of Thrones based on the content consumption data.
A system may generate content portion recommendations based on the preferred portion.
Additionally or alternatively, a system may determine a portion of a content item is not preferred based on information about content consumption. For example, a system may determine a scene of House of Cards is not preferred if a user skips the scene. A system may generate content portion recommendations based on the portion that is not preferred. In some embodiments, the content recommendations and/or content portion modifications may be generated as modified portions of content items based on a preferred portion and/or a nonpreferred portion.
Additionally or alternatively, a system may determine a preferred content item length based on the information about content consumption. The system may generate content recommendations and/or content portion recommendations based on the preferred content item length. For example, a user may prefer to watch a final battle scene in Lord of the Rings. The user may have indicated preferring to watch an abridged final battle scene in Lord of the Rings without dialogue mixed into the battle scene by skipping past some or all of the dialogue. The system may generate a battle scene recommendation with little dialogue in Lord of the Rings or other recommended content. The system may determine a preferred scene length of five minutes from the final battle scene based on the skipping. The system may generate scene recommendations of around five minutes.
Brief Description of the Drawings
Detailed Description
System 100 saves all the content consumption data corresponding to content consumption. The content consumption data may include fully watched content or portions of content. The portions of content may be indicative of points of interest. The LSTM RNN may be trained in a supervised fashion on a set of training sequences (i.e. training data) by using machine learning techniques (e.g. gradient descent and backpropagation through the content consumption data). The described optimization may compute gradients to change one or more weights of the LSTM RNN model. Unnecessary or wrong recommendations, which indicate errors in the weights, may be looped in a feedback loop using machine learning techniques (e.g. gradient descent and backpropagation) through the LSTM RNN to generate one or more optimized weights.
RNN
model). The model may include data about the scenes of interest from an episode based on content consumption data. Additionally or alternatively, the model may include data about scenes of disinterest based on content consumption data. System 100 may generate new content recommendations based on preferences using the model. In some embodiments, portions (e.g. scenes) of interest may be recommended which may be filtered content from previously consumed content. That filtered content may be sorted and/or ranked based on a variety of criteria (e.g. by preferred content themes and/or genres based on content consumption data 108) and may be recommended. New content consumption data (e.g. content consumption data 108) based on content recommendations 104 may be provided to the LSTM RNN model, which may improve .. future content recommendations 104.
Personalized model 210 may be personalized to a specific profile based on content consumption data 208. Personalized model 210 may be generated by recommendations engine 202. For example, a trained model may not have been trained indicating that a user likes Game of Thrones. A personalized model may be generated by updating the trained model with content consumption data from when a user watched Game of Thrones. In some embodiments, the personalized model may be a first updated model.
In some embodiments, the personalized model may be associated with a profile.
For example, the personalized model is linked to a user profile and the associated activity.
For example, the personalized model is linked to a gaming profile. For example, the personalized model is linked to a reading profile.
Content metadata may indicate time, location, content type, and/or content genre of consumed content. The information may also include control activity data. Control activity data may indicate one or more control function selections made while consuming content.
For example, the activity data may indicate that a user enjoys listening to music associated with Game of Thrones during a weekend night at home. In some embodiments, the information may include information corresponding to portions of consumed content. For example, the activity data may include skipped scenes or repeated watching of a scene in Game of Thrones. For example, the activity data may include finishing the same game multiple times. For example, the activity data may include activity related to virtual reality content. In some embodiments, the information corresponding to content consumption may be associated with a profile. For example, a user may have watched and enjoyed an action scene in a series such as Game of Thrones. The corresponding activity indicating enjoyment of watching the action scene may be received by the system and saved in the user's profile.
System 200 may determine a period of time after which consumption of previously consumed content may preferred. For example, a user may have watched Game of Thrones over a year ago. System 200, based on content consumption data 208 or new content consumption data 216, may determine the user might enjoy rewatching Game of Thrones after a year based on the activity data. Personalized model 210 may be used to generate Game of Thrones for recommendation in response to the determining.
The system may cause to be provided the content recommendations. For example, a content recommendation, such as Lord of the Rings, may be provided and displayed on a device.
In some embodiments, the content recommendations may be a first set of content recommendations (e.g. as part of loop 218). For example, personalized model 210 may be used to generate a game related to Game of Thrones. For example, personalized model 210 may be used to generate VR content related to Game of Thrones.
System 300 may include personalized model 302. For example, personalized model can be personalized model 210. Personalized model 302 may be used to provide a first set of content recommendations 304 to user equipment 306. System 300 may receive additional information corresponding to content consumption. For example, new content consumption data 308 may be collected and transmitted. In some embodiments, content consumption data 308 may be activity data corresponding to consumption of recommendations 304. In some embodiments, the additional information may include activity corresponding to content recommendations provided by the system.
Additionally or alternatively, the additional information may include activity corresponding to other content recommendations consumed by a user.
Personalized model 302 and activity data 308 may be used to generate an updated personalized model 308. Updated personalized model 310 may be a second updated model. For example, recommendations engine 202 may generate updated model 310. Updated model 308 may be used to generate a second set of content recommendations 310. In some embodiments, system 300 may be considered a single occurrence of loop 218 containing model 210, recommendations 212, device 214, and content consumption data 216.
For example, updated personalized model 310 can be updated personalized model 210 after loop 218. For example, a user may watch the recommendation, Lord of the Rings, and another content item such as House of Cards. The system receives related activity data and the personalized model may be updated to include the related activity data. The second updated model may be referred to as a second personalized model.
System 400 may generate content recommendations using personalized model 402 and content consumption data 404. The content recommendations may include recommended portions of content 418. The content recommendations may include ranked content recommendations 420 based on a generated genre ranking. The content recommendations may include modified content 422. Modified content 422 may be modified based on the content consumption data. For example, out of a seven minute length scene from an episode of Game of Thrones, a user may only watch starting from the third minute to the seventh minute of the scene. The system may determine that the user prefers to watch the four minute length part of the scene. When generating the recommended content, the system may modify the length of the content or recommended portions of the content based on the four minute part of the scene. It should be noted that recommendations data 418-422 are shown separately for clarity and may be included in or be a single entity (e.g. content recommendations 212).
The system may cause to provide the generated content recommendations to exemplary user equipment 424.
In client-server based embodiments, control circuitry 504 may include communications circuitry 508 suitable for communicating with a guidance application server or other networks or client devices. The instructions for carrying out the above-mentioned functionality may be stored on the guidance application server. Communications circuitry 508 may include a cable modem, an integrated services digital network (ISDN) modem, a digital subscriber line (DSL) modem, Ethernet card, or a wireless modem for communications with other equipment, or any other suitable communications circuitry.
Such communications may involve the Internet or any other suitable communications networks or paths (which is described in more detail in connection with FIG.
7). In addition, communications circuitry may include circuitry that enables peer-to-peer communication of user equipment devices, or communication of user equipment devices in locations remote from each other.
I/0 path 602 may provide content (e.g., broadcast programming, on-demand programming, Internet content, content available over a local area network (LAN) or wide area network (WAN), and/or other content) and data to control circuitry 604, which includes processing circuitry 606 and storage 608. Control circuitry 604 may be used to send and receive commands, requests, and other suitable data using I/0 path 602. I/0 path 602 may connect control circuitry 604 (and specifically processing circuitry 606) to one or more communications paths (described below). I/0 functions may be provided by one or more of these communications paths, but are shown as a single path in FIG.
6 to avoid overcomplicating the drawing. In some embodiments, a cloud entertainment service system (e.g. a cloud gaming console) may substantially perform any or all of the functions of user equipment described herein and provide content to remote user equipment in a format suitable for consumption.
For example, the media guidance application may provide instructions to control circuitry 604 to generate the media guidance displays. In some implementations, any action performed by control circuitry 604 may be based on instructions received from the media guidance application.
Such communications may involve the Internet or any other suitable communications networks or paths (which is described in more detail in connection with FIG.
7). In addition, communications circuitry may include circuitry that enables peer-to-peer communication of user equipment devices, or communication of user equipment devices in locations remote from each other.
Nonvolatile memory may also be used (e.g., to launch a boot-up routine and other instructions). Cloud-based storage, described in relation to FIG. 7, may be used to supplement storage 608 or instead of storage 608.
Control circuitry 604 may also include scaler circuitry for upconverting and downconverting content into the preferred output format of the user equipment 600.
Circuitry 604 may also include digital-to-analog converter circuitry and analog-to-digital converter circuitry for converting between digital and analog signals. The tuning and encoding circuitry may be used by the user equipment device to receive and to display, to play, or to record content. The tuning and encoding circuitry may also be used to receive guidance data. The circuitry described herein, including for example, the tuning, video generating, encoding, decoding, encrypting, decrypting, scaler, and analog/digital circuitry, may be implemented using software running on one or more general purpose or specialized processors. Multiple tuners may be provided to handle simultaneous tuning functions (e.g., watch and record functions, picture-in-picture (PIP) functions, multiple-tuner recording, etc.). If storage 608 is provided as a separate device from user equipment 600, the tuning and encoding circuitry (including multiple tuners) may be associated with storage 608.
In such circumstances, user input interface 610 may be integrated with or combined with display 612. Display 612 may be one or more of a monitor, a television, a liquid crystal display (LCD) for a mobile device, amorphous silicon display, low temperature poly silicon display, electronic ink display, electrophoretic display, active matrix display, electro-wetting display, electrofluidic display, light-emitting diode display, electroluminescent display, plasma display panel, high-performance addressing display, thin-film transistor display, organic light-emitting diode display, surface-conduction electron-emitter display (SED), laser television, carbon nanotubes, quantum dot display, interferometric modulator display, or any other suitable equipment for displaying visual images. In some embodiments, display 612 may be HDTV-capable. In some embodiments, display 612 may be a 3D display, and the interactive media guidance .. application and any suitable content may be displayed in 3D. A video card or graphics card may generate the output to the display 612. The video card may offer various functions such as accelerated rendering of 3D scenes and 2D graphics, MPEG-4 decoding, TV output, or the ability to connect multiple monitors. The video card may be any processing circuitry described above in relation to control circuitry 604. The video card may be integrated with the control circuitry 604. Speakers 614 may be provided as integrated with other elements of user equipment device 600 or may be stand-alone units. The audio component of videos and other content displayed on display 612 may be played through speakers 614. In some embodiments, the audio may be distributed to a receiver (not shown), which processes and outputs the audio via speakers 614.
For example, it may be a stand-alone application wholly-implemented on user equipment device 600. In such an approach, instructions of the application are stored locally (e.g., in storage 608), and data for use by the application is downloaded on a periodic basis (e.g., from an out-of-band feed, from an Internet resource, or using another suitable approach). Control circuitry 604 may retrieve instructions of the application from storage 608 and process the instructions to generate any of the displays discussed herein. Based on the processed instructions, control circuitry 604 may determine what action to perform when input is received from input interface 610. For example, movement of a cursor on a display up/down may be indicated by the processed instructions when input interface 610 indicates that an up/down button was selected.
For example, the remote server may store the instructions for the application in a storage device. The remote server may process the stored instructions using circuitry (e.g., control circuitry 604) and generate the displays discussed above and below.
The client device may receive the displays generated by the remote server and may display the content of the displays locally on equipment device 600. This way, the processing of the instructions is performed remotely by the server while the resulting displays are provided locally on equipment device 600. Equipment device 600 may receive inputs .. from the user via input interface 610 and transmit those inputs to the remote server for processing and generating the corresponding displays. For example, equipment device 600 may transmit a communication to the remote server indicating that an up/down button was selected via input interface 610. The remote server may process instructions in accordance with that input and generate a display of the application corresponding to the input (e.g., a display that moves a cursor up/down). The generated display is then transmitted to equipment device 600 for presentation to the user.
.. Binary Interchange Format (EBIF), received by control circuitry 604 as part of a suitable feed, and interpreted by a user agent running on control circuitry 604. For example, the guidance application may be an EBIF application. In some embodiments, the guidance application may be defined by a series of JAVA-based files that are received and run by a local virtual machine or other suitable middleware executed by control circuitry 604.
In some of such embodiments (e.g., those employing MPEG-2 or other digital media encoding schemes), the guidance application may be, for example, encoded and transmitted in an MPEG-2 object carousel with the MPEG audio and video packets of a program.
In addition, each user may utilize more than one type of user equipment device and also __ more than one of each type of user equipment device. For example, user equipment may include an infotainment console in a vehicle. For example, user equipment may include a virtual reality (VR) device, an augmented reality (AR) device, a mobile phone, and/or a cloud gaming console.
Namely, user television equipment 702, user computer equipment 704, and wireless user communications device 706 are coupled to communications network 714 via communications paths 708, 710, and 712, respectively. Communications network may be one or more networks including the Internet, a mobile phone network, mobile voice or data network (e.g., a 4G or LTE network), cable network, public switched telephone network, optical wireless communications network (e.g. Li-Fi), or other types of communications network or combinations of communications networks. Paths 708, 710, and 712 may separately or together include one or more communications paths, such as, a satellite path, a fiber-optic path, a cable path, a path that supports Internet communications (e.g., IPTV), free-space connections (e.g., for broadcast or other wireless signals), or any other suitable wired or wireless communications path or combination of such paths. Path 712 is drawn with dotted lines to indicate that in the exemplary embodiment shown in FIG. 7 it is a wireless path and paths 708 and 710 are drawn as solid lines to indicate they are wired paths (although these paths may be wireless paths, if desired). Communications with the user equipment devices may be provided by one or more of these communications paths but are shown as a single path in FIG. 7 to avoid overcomplicating the drawing.
1394 cables, wireless paths (e.g., Bluetooth, Bluetooth Low Energy, infrared, 11x, etc.), or other short-range communication via wired or wireless paths.
BLUETOOTH is a certification mark owned by Bluetooth SIG, INC. The user equipment devices may also communicate with each other directly through an indirect path via communications network 714.
Program schedule data and other guidance data may be provided to the user equipment on a television channel sideband, using an in-band digital signal, using an out-of-band digital signal, or by any other suitable data transmission technique. Program schedule data and other media guidance data may be provided to user equipment on multiple analog or digital television channels.
Media guidance may be provided to the user equipment with any suitable frequency (e.g., continuously, daily, a user-specified period of time, a system-specified period of time, in response to a request from user equipment, etc.). Media guidance data source 718 may provide user equipment devices 702, 704, and 706 the media guidance application itself or software updates for the media guidance application.
For example, the viewer data may include current and/or historical user activity information (e.g., what content the user typically watches, what times of day the user watches content, whether the user interacts with a social network, at what times the user interacts with a social network to post information, what types of content the user typically watches (e.g., pay TV or free TV), mood, brain activity information, etc.).
The media guidance data may also include subscription data. For example, the subscription data may identify to which sources or services a given user subscribes and/or to which sources or services the given user has previously subscribed but later terminated access (e.g., whether the user subscribes to premium channels, whether the user has added a premium level of services, whether the user has increased Internet speed). In some embodiments, the viewer data and/or the subscription data may identify patterns of a given user for a period of more than one year. The media guidance data may include a model (e.g., a survivor model) used for generating a score that indicates a likelihood a given user will terminate access to a service/source. For example, the media guidance application may process the viewer data with the subscription data using the model to generate a value or score that indicates a likelihood of whether the given user will terminate access to a particular service or source. In particular, a higher score may indicate a higher level of confidence that the user will terminate access to a particular service or source. Based on the score, the media guidance application may generate promotions that entice the user to keep the particular service or source indicated by the score as one to which the user will likely terminate access.
When executed by control circuitry of the remote server (such as media guidance data source 718), the media guidance application may instruct the control circuitry to generate the guidance application displays and transmit the generated displays to the user equipment devices. The server application may instruct the control circuitry of the media guidance data source 718 to transmit data for storage on the user equipment. The client application may instruct control circuitry of the receiving user equipment to generate the guidance application displays.
Youtube is a trademark owned by Google Inc., Netflix is a trademark owned by Netflix Inc., and Hulu is a trademark owned by Hulu, LLC. OTT content providers may additionally or alternatively provide media guidance data described above. In addition to content and/or media guidance data, providers of OTT content can distribute media guidance applications (e.g., web-based applications or cloud-based applications), or the content can be displayed by media guidance applications stored on the user equipment device.
Various systems and methods for user equipment devices communicating, where the user equipment devices are in locations remote from each other, is discussed in, for example, Ellis et al., U.S. Patent No. 8,046,801, issued October 25, 2011, which is hereby incorporated by reference herein in its entirety.
These cloud resources may include one or more content sources 716 and one or more media guidance data sources 718. In addition or in the alternative, the remote computing sites may include other user equipment devices, such as user television equipment 702, user computer equipment 704, and wireless user communications device 706. For example, the other user equipment devices may provide access to a stored copy of a video or a streamed video. In such embodiments, user equipment devices may operate in a peer-to-peer manner without communicating with a central server.
In some embodiments, a user device may receive content from multiple cloud resources simultaneously. For example, a user device can stream audio from one cloud resource while downloading content from a second cloud resource. Or a user device can download content from multiple cloud resources for more efficient downloading.
In some embodiments, user equipment devices can use cloud resources for processing operations such as the processing operations performed by processing circuitry described in relation to FIG. 6. In such embodiments, user equipment devices may be connected to a cloud entertainment service system (e.g. cloud gaming consoles).
Process 800, and any of the following processes, may be executed by control circuitry (e.g. by instructing control circuitry 504 in a recommendations engine 502).
The control circuitry may be part of a recommendations engine (e.g. recommendations engine 502) .. or may be part of a remote server separate from the recommendations engine by way of a communications network or distributed over a combination of both. A system (e.g.
system 200) may perform process 800 as described herein.
The additional content recommendations may be a second set of content recommendations (e.g. content recommendations 310). A system (e.g. system 300) may cause to be provided the second content recommendations to user equipment.
Process 1000 may be part of process 900, and/or any other process described in the present disclosure, when generating content recommendations based on content consumption data. Process 1000 may be performed by a system (e.g. system 400, where content consumption data 404 includes data 406-416). For simplicity, the content ranking described in relation to process 1000 herein is based on content genres and/or themes, but it should be noted that the content ranking may be based on one or more criteria of content consumption, including content genres and/or themes.
Content consumption data may have indicated a user prefers action over fantasy and fantasy over drama. In this non-limiting example, the system may generate a preferred genre ranking of 1) action, 2) fantasy, and 3) drama. The system may cause to provide the content recommendations in the order of 1) Spartacus, 2) Lord of the Rings, and 3) Tudors.
RNN) model. For simplicity, process 1100 is described in the context of a LSTM RNN
model.
It should be noted that process 1100 described herein may be performed by a system using any applicable model including variants of a LSTM RNN model. It should also be noted that, while primarily machine learning techniques are described, any appropriate techniques for computations, optimizations, etc. may be used in performing process 1100 as alternative or additional parts of the process.
For example, control function activity while watching Game of Thrones may indicate enjoyment of a particular scene such as an action scene. For example, a user may have replayed the action scene using a remote controller, voice control, or other control device and method. A cell state may have already included data indicative of the user watching Game of Thrones but may not include the replay activity of the particular scene. Then, a system may determine to update the state (or states) corresponding to replay activity of that particular scene.
.. [0107] A model (e.g. a LSTM RNN model) may indicate preferences or other criteria corresponding to content consumption by one or more sets of weights. The weights may represent the preferences or other criteria using numerical data or other formats. The weights may be associated with any of the models described in the present disclosure and based on content consumption data. As indicated, the weights may be determined and/or optimized using machine learning techniques, or any other relevant techniques, such as combining gradient descent and backpropagation. It is preferable that a personalized model is generated based on a set of optimized weights and one or more cell states with respect to the preferences of a user.
[0108] At 1102, one or more cell states may be determined based on weights associated with a trained model (or any other model described in the present disclosure) and content consumption data. For example, a user may have replayed the action scene using a remote controller, voice control, or other control device and method.
A system may determine to update the states related to replay of an action scene and the associated weights. For example, recommendations engine 202 may determine the cell states based on content consumption data 208 and trained model 206 in order to generate personalized model 210, which may be based on a LSTM RNN model. In some embodiments, a recommendations engine may combine training data, content consumption data, and a trained model in a single step to generate a personalized model.
[0109] At 1104, one or more sets of weights may be determined based on the cell states. The weights may be determined based on all or part of the cell states.
For example, a system may determine from the cell state to update only some of the weights related to replay of an action scene. Updating the weights may involve machine learning techniques such as gradient descent.
[0110] At 1106, a system may determine whether the one or more weights are optimized. It is preferred that one or more weights are optimized with respect to preferences associated with content consumption data. For example, the weights may indicate incorrect predictions in preferred content (i.e. have a high error value). If the weights have high error, a system may determine the weights are not optimized and return to 1102. Optimization techniques such as back propagation may be used to reduce the error in a loop (e.g. loop including 1102, 1104, and 1106) and update the weights and states until the weights are optimized. If the weights are determined to be optimized, process 1100 continues to 1108.
[0111] At 1108, an updated model is generated based on the set of optimized weights and the one or more states. In some embodiments, a LSTM RNN model may be generated where the cell states store all the content consumption data and the weights may be used to determine the criteria for content recommendations. In this manner, a recommendations engine may generate content recommendations by determining whether a content item matches the criteria based on the weights.
[0112] FIG. 12 shows an illustrative block diagram of a system 1200 for providing content portion recommendations using a trained model, in accordance with some embodiments of the disclosure. System 1200 may provide a trained model 1202.
In some embodiments, trained model 1202 may have been updated based on information about content consumption associated with a profile. The information about content consumption may include information about consumption of portions of content items (i.e. content portion consumption data 1204). System 1200 may generate content recommendations using trained model 1202. Additionally or alternatively, system 1200 may generate content portion recommendations 1206 based on the generated content recommendations and on the information about consumption of portions of content items (i.e. content portion consumption data 1204). Content portion recommendations 1206 may include recommendations based on content genre 1208 and/or recommendations based on content item length 1210. System 1200 may provide content portion recommendations 1206 to user equipment 1212. For example, Lord of the Rings may be recommended using any of the models described in the present disclosure based on content consumption data. System 1200 may generate and provide scene recommendations from Lord of the Rings and/or a similar series like Game of Thrones based on the content consumption data.
[0113] FIG. 13 shows a flowchart of a process 1300 for providing content portion recommendations based on content recommendations, in accordance with some embodiments of the disclosure. Process 1300 may be performed by any of the systems (e.g. system 1200) described in the present disclosure.
[0114] At 1302, a trained model (e.g. trained model 1202) for generating content recommendations may be provided (e.g. by recommendations engine 202). The trained model may have been updated based on information about content consumption associated with a profile. The information about content consumption may include content portion consumption data 1304. At 1306, the trained model may be used to .. generate content recommendations. For example, system 200 may generate content recommendations 212. At 1308, a system may generate content portion recommendations based on the content recommendations and on the information about consumption of portions of content items (e.g. content portion consumption data 1304).
At 1310, a system may provide or cause to be provided the content portion recommendations. For example, system 1200 may execute instructions via control circuitry to transmit recommendations 1206 to user equipment 1212.
[0115] FIG. 14 shows a flowchart of a process 1400 for generating content portion recommendations based on one or more preferred and/or nonpreferred portions of a content item, in accordance with some embodiments of the disclosure Process may be performed by any of the systems (e.g. system 1200) described in the present disclosure.
[0116] At 1402, a preferred portion of a content item may be determined based on information about consumption of portions of content items (i.e. content portion consumption data 1404). For example, a user prefers watching a battle scene from Lord of the Rings based on content portion consumption data 1404. In some embodiments, a system may determine a preferred portion of a content item based on user activity corresponding to the content item. In some embodiments, a system may determine a portion of a content item based on consumption data of one or more content items associated with information about content consumption. The content items may include the content item including the portion and/or other content items. For example, the other content items may be similar to a portion of the content item. A system may identify the portion of the content item based on similarity of other consumed content with the portion of the content item. Determining the similarity may be based on various metrics such as numerical data (e.g. a similarity score), content metadata, or other data indicative of the similarity.
[0117] At 1406, content portion recommendations may be generated based on one or more preferred and/or nonpreferred portions of content items. In some embodiments, a __ consumption preference may be determined based on preferred and/or nonpreferred portions. The consumption preference may be associated with a profile. In some embodiments, a consumption preference may be determined based on consumption activity information associated with a portion. For example, content consumption data 1204 may indicate activity of a scene from Lord of the Rings being watched multiple times. In some embodiments, a consumption preference may be determined based on information about content consumption including content genres, content lengths, time of content consumption, location of content consumption, content type, and/or control function selection made during content consumption. Content consumption preference may include preference of content lengths, time of content consumption, location of content consumption, content type, and/or control function selection made during content consumption.
[0118] In some embodiments, a trained or personalized model may be updated based on preferred and/or nonpreferred portions. In some embodiments, a trained or personalized model may be used to generate content portion recommendations based on preferred and/or nonpreferred portions. In some embodiments, the content recommendations and/or content portion modifications may be generated as modified recommendations based on a preferred or a nonpreferred portion.
[0119] In some embodiments, a trained model may be provided that has been updated based on information about content consumption associated with a profile. The information about content consumption may include information about consumption of portions of content items. A system may generate content recommendations using the trained model. In some embodiments, the system may generate content portion recommendations based on content recommendations and on information about consumption of portions of content items. The system may provide the content portion recommendations. For example, Lord of the Rings may be recommended using any of the models described in the present disclosure based on content consumption data. A
system may generate and provide scene recommendations from Lord of the Rings and/or a similar series like Game of Thrones based on the content consumption data.
[0120] As referred herein, the term "in response to" refers to initiated as a result of For example, a first action being performed in response to a second action may include interstitial steps between the first action and the second action. As referred herein, the term "directly in response to" refers to caused by. For example, a first action being performed directly in response to a second action may not include interstitial steps between the first action and the second action.
[0121] The systems and processes discussed above are intended to be illustrative and not limiting. One skilled in the art would appreciate that the actions of the processes discussed herein may be omitted, modified, combined, and/or rearranged, and any additional actions may be performed without departing from the scope of the invention.
More generally, the above disclosure is meant to be exemplary and not limiting. Only the claims that follow are meant to set bounds as to what the present disclosure includes.
Furthermore, it should be noted that the features and limitations described in any one embodiment may be applied to any other embodiment herein, and flowcharts or examples relating to one embodiment may be combined with any other embodiment in a suitable manner, done in different orders, or done in parallel. In addition, the systems and methods described herein may be performed in real time. It should also be noted that the systems and/or methods described above may be applied to, or used in accordance with, other systems and/or methods.
This specification discloses embodiments which include, but are not limited to, the following:
1. A computer-implemented method of providing a content recommendation, the method comprising:
providing a trained model to provide content recommendations, the trained model having been trained using a predefined set of training data;
receiving information corresponding to content consumption;
associating the information corresponding to content consumption with a profile;
generating, using processing circuitry, an updated model based on the information and on the trained model, wherein the updated model is associated with the profile;
generating the content recommendations using the updated model; and causing to be provided the content recommendations.
2. The method of item 1, wherein the updated model is a first updated model and the content recommendations are first content recommendations, the method further comprising:
receiving additional information corresponding to consumption of the first content recommendations;
generating, using processing circuitry, a second updated model based on the additional information and on the first updated model, wherein the second updated model is associated with the profile;
generating second content recommendations using the second updated model;
and causing to be provided the second content recommendations.
3. The method of item 1, wherein the predefined set of training data is agnostic of the profile associated with the user.
4. The method of item 1, wherein generating the content recommendations comprises generating recommendations of one or more portions of a content item using the updated model.
5. The method of item 1, wherein the information corresponding to content consumption is based on at least one of a time of consumption, a location of consumption, a genre of content consumed, a type of content consumed, or a control function selection made during content consumption.
6. The method of item 5, wherein the updated model is a first updated model, and wherein the content recommendations are first content recommendations, the method further comprising:
ranking content genres contained in the information corresponding to content consumption to generate a genre ranking;
generating a second updated model based on the first updated model and on the genre ranking; and generating second content recommendations using the second updated model, wherein ordering of the second content recommendations is based on the genre ranking.
7. The method of item 1, wherein the information corresponding to content consumption is based on at least one of full consumption of content, partial consumption of content, or frequency of consumption of content.
8. The method of item 1, wherein generating the updated model comprises generating a model using a long short-term memory recurrent neural network (LSTM
RNN).
9. The method of item 8, wherein generating the model using the LSTM RNN
comprises:
determining one or more states iteratively based on one or more sets of weights associated with the trained model and based on the information corresponding to content consumption;
determining one or more sets of optimized weights; and generating the model based on the one or more sets of optimized weights and on the one or more states.
10. The method of item 1, wherein the information corresponding to content consumption comprises information about activity on a social network.
11. A system for providing a content recommendation, the system comprising:
control circuitry configured to:
provide a trained model to provide content recommendations, the trained model having been trained using a predefined set of training data;
receive information corresponding to content consumption;
associate the information corresponding to content consumption with a profile;
processing circuitry configured to:
generate an updated model based on the information corresponding to content consumption and on the trained model, wherein the updated model is associated with the profile; and wherein the control circuitry is further configured to:
generate the content recommendations using the updated model; and cause to be provided the content recommendations.
12. The system of item 11, wherein the updated model is a first updated model and the content recommendations are first content recommendations, and wherein:
the control circuitry is further configured to:
receive additional information corresponding to consumption of the first content recommendations;
the processing circuitry is further configured to:
generate a second updated model based on the additional information and on the first updated model, wherein the second updated model is associated with the profile; and the control circuitry is further configured to:
generate second content recommendations using the second updated model; and cause to be provided the second content recommendations.
13. The system of item 11, wherein the predefined set of training data is agnostic of the profile associated with the user.
14. The system of item 11, wherein the control circuitry is configured to generate the content recommendations by generating recommendations of one or more portions of a content item using the updated model.
15. The system of item 11, wherein the information corresponding to content consumption is based on at least one of a time of consumption, a location of consumption, a genre of content consumed, a type of content consumed, or a control function selection made during content consumption.
16. The system of item 15, wherein the updated model is a first updated model, wherein the content recommendations are first content recommendations, and wherein:
the control circuitry is further configured to rank content genres contained in the information corresponding to content consumption to generate a genre ranking;
the processing circuitry is further configured to generate a second updated model based on the first updated model and on the genre ranking; and the control circuitry is further configured to generate second content recommendations using the second updated model, wherein ordering of the second content recommendations is based on the genre ranking 17. The system of item 11, wherein the information corresponding to content consumption is based on at least one of full consumption of content, partial consumption of content, or frequency of consumption of content.
18. The system of item 11, wherein the processing circuitry is configured to generate the updated model by generating a model using a long short-term memory recurrent neural network (LSTM RNN).
19. The system of item 18, wherein generating the model using the LSTM RNN
comprises:
determining one or more states iteratively based on one or more sets of weights associated with the trained model and based on the information corresponding to content consumption;
determining one or more sets of optimized weights; and generating the model based on the one or more sets of optimized weights and on the one or more states.
20. The system of item 11, wherein the information corresponding to content consumption comprises information about activity on a social network.
21. A system for providing a content recommendation, the system comprising:
means for providing a trained model to provide content recommendations, the trained model having been trained using a predefined set of training data;
means for receiving information corresponding to content consumption;
means for associating the information corresponding to content consumption with a profile;
means for generating, using processing circuitry, an updated model based on the information corresponding to content consumption and on the trained model, wherein the updated model is associated with the profile;
means for generating the content recommendations using the updated model; and means for causing to be provided the content recommendations.
22. The system of item 21, wherein the updated model is a first updated model and the content recommendations are first content recommendations, the system further comprising:
means for receiving additional information corresponding to consumption of the first content recommendations;
means for generating a second updated model based on the additional information and on the first updated model, wherein the second updated model is associated with the profile;
means for generating second content recommendations using the second updated model; and means for causing to be provided the second content recommendations.
23. The system of item 21, wherein the predefined set of training data is agnostic of the profile associated with the user.
24. The system of item 21, wherein means for generating the content recommendations comprises means for generating recommendations of one or more portions of a content item using the updated model.
25. The system of item 21, wherein the information corresponding to content consumption is based on at least one of a time of consumption, a location of consumption, a genre of content consumed, a type of content consumed, or a control function selection made during content consumption.
26. The system of item 25, wherein the updated model is a first updated model, and wherein the content recommendations are first content recommendations, the system further comprising:
means for ranking content genres contained in the information corresponding to content consumption to generate a genre ranking;
means for generating a second updated model based on the first updated model and on the genre ranking; and means for generating second content recommendations using the second updated model, wherein ordering of the second content recommendations is based on the genre ranking.
27. The system of item 21, wherein the information corresponding to content consumption is based on at least one of full consumption of content, partial consumption of content, or frequency of consumption of content.
28. The system of item 21, wherein means for generating the updated model comprises means for generating a model using a long short-term memory recurrent neural network (LSTM RNN).
29. The system of item 28, wherein means for generating the model using the LSTM
RNN comprises:
means for determining one or more states iteratively based on one or more sets of weights associated with the trained model and based on the information corresponding to content consumption;
means for determining one or more sets of optimized weights; and means for generating the model based on the one or more sets of optimized weights and on the one or more states.
30. The system of item 21, wherein the information corresponding to content consumption comprises information about activity on a social network.
31. A non-transitory computer-readable medium having instructions encoded thereon that when executed by control circuitry cause the control circuitry to:
provide a trained model to provide content recommendations, the trained model having been trained using a predefined set of training data;
receive information corresponding to content consumption;
associate the information corresponding to content consumption with a profile;
generate, using processing circuitry, an updated model based on the information corresponding to content consumption and on the trained model, wherein the updated model is associated with the profile;
generate the content recommendations using the updated model; and cause to be provided the content recommendations.
32. The non-transitory computer readable medium of item 31, wherein the instructions cause the control circuitry to further:
receive additional information corresponding to consumption of the first content recommendations;
generate, using processing circuitry, a second updated model based on the additional information and on the first updated model, wherein the second updated model is associated with the profile;
generate second content recommendations using the second updated model; and cause to be provided the second content recommendations.
33. The non-transitory computer readable medium of item 31, wherein the predefined set of training data is agnostic of the profile associated with the user.
34. The non-transitory computer readable medium of item 31, wherein the instructions for generating the content recommendations cause the control circuitry to generate recommendations of one or more portions of a content item using the updated model.
35. The non-transitory computer readable medium of item 31, wherein the information corresponding to content consumption is based on at least one of a time of consumption, a location of consumption, a genre of content consumed, a type of content consumed, or a control function selection made during content consumption.
36. The non-transitory computer readable medium of item 35, wherein the updated model is a first updated model, and wherein the content recommendations are first content recommendations, and wherein the instructions cause the control circuitry to further:
receive additional information corresponding to consumption of the first content recommendations;
generate, using processing circuitry, a second updated model based on the additional information and on the first updated model, wherein the second updated model is associated with the profile; and generate second content recommendations using the second updated model; and cause to be provided the second content recommendations.
37. The non-transitory computer readable medium of item 31, wherein the information corresponding to content consumption is based on at least one of full consumption of content, partial consumption of content, or frequency of consumption of content.
38. The non-transitory computer readable medium of item 31, wherein the instructions for generating the updated model cause the control circuitry to generate a model using a long short-term memory recurrent neural network (LSTM RNN).
39. The non-transitory computer readable medium of item 38, wherein the instructions for generating the model using the LSTM RNN cause the control circuitry to:
determine one or more states iteratively based on one or more sets of weights associated with the trained model and based on the information corresponding to content consumption;
determine one or more sets of optimized weights; and generate the model based on the one or more sets of optimized weights and on the one or more states.
40. The non-transitory computer readable medium of item 31, wherein the information corresponding to content consumption comprises information about activity on a social network 41. A computer-implemented method of providing a content recommendation, the method comprising:
providing a trained model to provide content recommendations, the trained model having been trained using a predefined set of training data;
receiving information corresponding to content consumption;
associating the information corresponding to content consumption with a profile;
generating, using processing circuitry, an updated model based on the information corresponding to content consumption and on the trained model, wherein the updated model is associated with the profile;
generating the content recommendations using the updated model; and causing to be provided the content recommendations.
42. The method of item 41, wherein the updated model is a first updated model and the content recommendations are first content recommendations, the method further comprising:
receiving additional information corresponding to consumption of the first content recommendations;
generating, using processing circuitry, a second updated model based on the additional information and on the first updated model, wherein the second updated model is associated with the profile;
generating second content recommendations using the second updated model;
and causing to be provided the second content recommendations.
43. The method of any of items 41 and 42, wherein the predefined set of training data is agnostic of the profile associated with the user.
44. The method of any of items 41-43, wherein generating the content recommendations comprises generating recommendations of one or more portions of a content item using the updated model.
45. The method of any of items 41-44, wherein the information corresponding to content consumption is based on at least one of a time of consumption, a location of consumption, a genre of content consumed, a type of content consumed, or a control function selection made during content consumption.
46. The method of item 45, wherein the updated model is a first updated model, and wherein the content recommendations are first content recommendations, the method further comprising:
ranking content genres contained in the information corresponding to content consumption to generate a genre ranking;
generating a second updated model based on the first updated model and on the genre ranking; and generating second content recommendations using the second updated model, wherein ordering of the second content recommendations is based on the genre ranking.
47. The method of any of items 41-46, wherein the information corresponding to content consumption is based on at least one of full consumption of content, partial consumption of content, or frequency of consumption of content.
48. The method of any of items 41-47, wherein generating the updated model comprises generating a model using a long short-term memory recurrent neural network (L S TM RNN).
49. The method of item 48, wherein generating the model using the LSTM RNN
comprises:
determining one or more states iteratively based on one or more sets of weights associated with the trained model and based on the information corresponding to content consumption;
determining one or more sets of optimized weights; and generating the model based on the one or more sets of optimized weights and on the one or more states.
50. The method of any of items 41-49, wherein the information corresponding to content consumption comprises information about activity on a social network.
51. A computer-implemented method of providing content recommendations, the method comprising:
providing a trained model that had been updated based on information about content consumption associated with a profile, wherein the information about content .. consumption comprises information about consumption of portions of content items;
generating, using the trained model, content recommendations;
generating content portion recommendations based on the content recommendations and on the information about consumption of portions of content items; and causing to be provided the content portion recommendations.
52. The method of item 51, wherein a portion of a content item is preferred based on the information about consumption of portions of content items, and wherein generating content portion recommendations is at least partially based on the preferred portion.
53. The method of item 51, wherein a portion of a content item is not preferred based on the information about consumption of portions of content items, and wherein generating content portion recommendations is at least partially based on the nonpreferred portion.
54. The method of item 51, further comprising determining a preferred genre based on the information about content consumption, and wherein the content portion recommendations are based on the preferred genre.
55. The method of item 51, further comprising determining a preferred content item length based on the information about content consumption, and wherein the content portion recommendations are based on the preferred content item length.
56. The method of item 51, further comprising ranking content genres contained in the information about content consumption to generate a genre ranking, and wherein ordering of the content portion recommendations is based on the genre ranking.
57. The method of item 51, wherein the content recommendations are first content recommendations, and wherein the content portion recommendations are first content portion recommendations, the method further comprising:
receiving additional information corresponding to consumption of the content portion recommendations and of the content recommendations;
generating second content recommendations using the trained model;
generating second content portion recommendations based on the second content recommendations and on the additional information; and causing to be provided the second content portion recommendations.
58. The method of item 51, wherein the information about content consumption is based on at least one of full consumption of content, partial consumption of content, or frequency of consumption of content.
59. The method of item 51, wherein the information about content consumption is based on at least one of a time of consumption, a location of consumption, a genre of content consumed, a type of content consumed, or a control function selection made during content consumption.
60. The method of item 51, wherein the information about content consumption comprises information about activity on a social network.
61. A system for providing content recommendations, the system comprising:
communications circuitry configured to:
provide a trained model that had been updated based on information about content consumption associated with a profile, wherein the information about content consumption comprises information about consumption of portions of content items; and control circuitry configured to:
generate, using the trained model, content recommendations;
generate content portion recommendations based on the content recommendations and on the information about consumption of portions of content items; and cause to be provided the content portion recommendations.
62. The system of item 61, wherein a portion of a content item is preferred based on the information about consumption of portions of content items, and wherein the control circuitry is configured to generate content portion recommendations at least partially based on the preferred portion.
63. The system of item 61, wherein a portion of a content item is not preferred based on the information about consumption of portions of content items, and wherein the control circuitry is configured to generate content portion recommendations at least partially based on the nonpreferred portion.
64. The system of item 61, wherein the control circuitry is further configured to determine a preferred genre based on the information about content consumption, and wherein the content portion recommendations are based on the preferred genre.
65. The system of item 61, wherein the control circuitry is further configured to determine a preferred content item length based on the information about content consumption, and wherein the content portion recommendations are based on the preferred content item length.
66. The system of item 61, wherein the control circuitry is further configured to rank content genres contained in the information about content consumption to generate a genre ranking, and wherein ordering of the content portion recommendations is based on the genre ranking.
67. The system of item 61, wherein the content recommendations are first content recommendations, wherein the content portion recommendations are first content portion recommendations, and wherein:
the communications circuitry is further configured to:
receive additional information corresponding to consumption of the content portion recommendations and of the content recommendations; and the control circuitry is further configured to:
generate second content recommendations using the trained model;
generate second content portion recommendations based on the second content recommendations and on the additional information; and cause to be provided the second content portion recommendations.
68. The system of item 61, wherein the information about content consumption is based on at least one of full consumption of content, partial consumption of content, or frequency of consumption of content.
69. The system of item 61, wherein the information about content consumption is based on at least one of a time of consumption, a location of consumption, a genre of content consumed, a type of content consumed, or a control function selection made during content consumption.
70. The system of item 61, wherein the information about content consumption comprises information about activity on a social network.
71. A system for providing content recommendations, the system comprising:
means for providing a trained model that had been updated based on information about content consumption associated with a profile, wherein the information about content consumption comprises information about consumption of portions of content items;
means for generating, using the trained model, content recommendations;
means for generating content portion recommendations based on the content recommendations and on the information about consumption of portions of content items; and means for causing to be provided the content portion recommendations.
72. The system of item 71, wherein a portion of a content item is preferred based on the information about consumption of portions of content items, and wherein generating content portion recommendations is at least partially based on the preferred portion.
73. The system of item 71, wherein a portion of a content item is not preferred based on the information about consumption of portions of content items, and wherein generating content portion recommendations is at least partially based on the nonpreferred portion.
74. The system of item 71, further comprising means for determining a preferred genre based on the information about content consumption, and wherein the content portion recommendations are based on the preferred genre.
75. The system of item 71, further comprising means for determining a preferred content item length based on the information about content consumption, and wherein the content portion recommendations are based on the preferred content item length.
76. The system of item 71, further comprising means for ranking content genres contained in the information about content consumption to generate a genre ranking, and wherein ordering of the content portion recommendations is based on the genre ranking.
77. The system of item 71, wherein the content recommendations are first content recommendations, and wherein the content portion recommendations are first content portion recommendations the system further comprising:
means for receiving additional information corresponding to consumption of the content portion recommendations and of the content recommendations;
means for generating second content recommendations using the trained model;
means for generating second content portion recommendations based on the second content recommendations and on the additional information; and means for causing to be provided the second content portion recommendations.
78. The system of item 71, wherein the information about content consumption is based on at least one of full consumption of content, partial consumption of content, or frequency of consumption of content.
79. The system of item 71, wherein the information about content consumption is based on at least one of a time of consumption, a location of consumption, a genre of content consumed, a type of content consumed, or a control function selection made during content consumption.
80. The system of item 71, wherein the information about content consumption comprises information about activity on a social network.
81. A non-transitory computer-readable medium having instructions encoded thereon that when executed by control circuitry cause the control circuitry to:
provide a trained model that had been updated based on information about content consumption associated with a profile, wherein the information about content consumption comprises information about consumption of portions of content items;
generate, using the trained model, content recommendations;
generate content portion recommendations based on the content recommendations and on the information about consumption of portions of content items; and cause to be provided the content portion recommendations.
82. The non-transitory computer readable medium of item 81, wherein a portion of a content item is preferred based on the information about consumption of portions of content items, and wherein the instructions for generating content portion recommendations is at least partially based on the preferred portion.
83. The non-transitory computer readable medium of item 81, wherein a portion of a content item is not preferred based on the information about consumption of portions of content items, and wherein generating content portion recommendations is at least partially based on the nonpreferred portion.
84. The non-transitory computer readable medium of item 81, wherein the instructions cause the control circuitry to further determine a preferred genre based on the information about content consumption, and wherein the content portion recommendations are based on the preferred genre.
85. The non-transitory computer readable medium of item 81, wherein the instructions cause the control circuitry to further determine a preferred content item length based on the information about content consumption, and wherein the content portion recommendations are based on the preferred content item length.
86. The non-transitory computer readable medium of item 81, wherein the instructions cause the control circuitry to further rank content genres contained in the information about content consumption to generate a genre ranking, and wherein ordering of the content portion recommendations is based on the genre ranking.
87. The non-transitory computer readable medium of item 81, wherein the content recommendations are first content recommendations, and wherein the content portion recommendations are first content portion recommendations, and wherein the instructions cause the control circuitry to further:
receive additional information corresponding to consumption of the content portion recommendations and of the content recommendations;
generate second content recommendations using the trained model;
generate second content portion recommendations based on the second content recommendations and on the additional information; and cause to be provided the second content portion recommendations.
88. The non-transitory computer readable medium of item 81, wherein the information about content consumption is based on at least one of full consumption of content, partial consumption of content, or frequency of consumption of content.
89. The non-transitory computer readable medium of item 81, wherein the information about content consumption is based on at least one of a time of consumption, a location of consumption, a genre of content consumed, a type of content consumed, or a control function selection made during content consumption.
90. The non-transitory computer readable medium of item 81, wherein the information about content consumption comprises information about activity on a social network.
91. A computer-implemented method of providing content recommendations, the method comprising:
providing a trained model that had been updated based on information about content consumption associated with a profile, wherein the information about content consumption comprises information about consumption of portions of content items;
generating, using the trained model, content recommendations;
generating content portion recommendations based on the content recommendations and on the information about consumption of portions of content items; and causing to be provided the content portion recommendations.
92. The method of item 91, wherein a portion of a content item is preferred based on the information about consumption of portions of content items, and wherein generating content portion recommendations is at least partially based on the preferred portion.
93. The method of any of items 91 and 92, wherein a portion of a content item is not preferred based on the information about consumption of portions of content items, and wherein generating content portion recommendations is at least partially based on the nonpreferred portion.
94. The method of any of items 91-93, further comprising determining a preferred genre based on the information about content consumption, and wherein the content portion recommendations are based on the preferred genre.
95. The method of any of items 91-94, further comprising determining a preferred content item length based on the information about content consumption, and wherein the content portion recommendations are based on the preferred content item length.
96. The method of any of items 91-95, further comprising ranking content genres contained in the information about content consumption to generate a genre ranking, and wherein ordering of the content portion recommendations is based on the genre ranking.
97. The method of any of items 91-96, wherein the content recommendations are first content recommendations, and wherein the content portion recommendations are first content portion recommendations, the method further comprising:
receiving additional information corresponding to consumption of the content portion recommendations and of the content recommendations;
generating second content recommendations using the trained model;
generating second content portion recommendations based on the second content recommendations and on the additional information; and causing to be provided the second content portion recommendations.
98. The method of any of items 91-97, wherein the information about content consumption is based on at least one of full consumption of content, partial consumption of content, or frequency of consumption of content.
99. The method of any of items 91-98, wherein the information about content consumption is based on at least one of a time of consumption, a location of consumption, a genre of content consumed, a type of content consumed, or a control function selection made during content consumption.
100. The method of any of items 91-99, wherein the information about content consumption comprises information about activity on a social network.
Claims (13)
providing a trained model to provide content recommendations, the trained model having been trained using a predefined set of training data;
receiving information corresponding to content consumption;
associating the information corresponding to content consumption with a profile;
generating, using processing circuitry, an updated model based on the information corresponding to content consumption and on the trained model, wherein the updated model is associated with the profile;
generating the content recommendations using the updated model; and causing to be provided the content recommendations.
receiving additional information corresponding to consumption of the first content recommendations;
generating, using processing circuitry, a second updated model based on the additional information and on the first updated model, wherein the second updated model is associated with the profile;
generating second content recommendations using the second updated model;
and causing to be provided the second content recommendations.
ranking content genres contained in the information corresponding to content consumption to generate a genre ranking;
generating a second updated model based on the first updated model and on the genre ranking; and generating second content recommendations using the second updated model, wherein ordering of the second content recommendations is based on the genre ranking.
comprises:
determining one or more states iteratively based on one or more sets of weights associated with the trained model and based on the information corresponding to content consumption;
determining one or more sets of optimized weights; and generating the model based on the one or more sets of optimized weights and on the one or more states.
memory; and means for implementing the steps of the method of any of claims 1 to 10.
means for implementing the steps of the method of any of claims 1 to 10.
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| US16/806,995 US20210274256A1 (en) | 2020-03-02 | 2020-03-02 | Systems and methods for improving content recommendations using a trained model |
| US16/806,991 US11551086B2 (en) | 2020-03-02 | 2020-03-02 | Systems and methods for improving content recommendations using a trained model |
| PCT/US2020/066409 WO2021178024A1 (en) | 2020-03-02 | 2020-12-21 | Systems and methods for improving content recommendations using a trained model |
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| CN1867068A (en) | 1998-07-14 | 2006-11-22 | 联合视频制品公司 | Client-server based interactive television program guide system with remote server recording |
| AR019932A1 (en) | 1998-07-17 | 2002-03-27 | United Video Properties Inc | A PROVISION OF INTERACTIVE TELEVISION PROGRAMMING GUIDES THAT HAVE MULTIPLE DEVICES WITHIN A RESIDENCE OF A FAMILY GROUP AND A METHOD THAT USES IT |
| AR020608A1 (en) | 1998-07-17 | 2002-05-22 | United Video Properties Inc | A METHOD AND A PROVISION TO SUPPLY A USER REMOTE ACCESS TO AN INTERACTIVE PROGRAMMING GUIDE BY A REMOTE ACCESS LINK |
| US10616625B2 (en) * | 2018-05-21 | 2020-04-07 | Hulu, LLC | Reinforcement learning network for recommendation system in video delivery system |
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