Systems and methods for compiling and organizing multiple episodes of media content series
US-9560391-B2 · Jan 31, 2017 · US
US11889141B2 · US · B2
| Field | Value |
|---|---|
| Publication number | US-11889141-B2 |
| Application number | US-202217668658-A |
| Country | US |
| Kind code | B2 |
| Filing date | Feb 10, 2022 |
| Priority date | Mar 31, 2017 |
| Publication date | Jan 30, 2024 |
| Grant date | Jan 30, 2024 |
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Systems and methods are described herein such that, a media guidance application presents, in an interactive program guide, a virtual content source for binge watching a program series. The media guidance application may determine a program series a user is currently watching. The media guidance application may receive a user selection of a media asset. The media guidance application may determine a length of time between a current time and a start time of the media asset. The media guidance application may determine the next episodes of the program series the user can watch before the start time of the media asset and present them using a virtual content source.
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What is claimed is: 1. A method comprising: determining a predicted number of episodes of a program series likely to be consumed during a current binge watching session associated with a user profile; selecting the predicted number of episodes from a plurality of next episodes of the program series; determining whether a length of time associated with the current binge watching session is greater than a total runtime of the selected episodes of the program series; in response to determining that the length of time associated with the current binge watching session is greater than the total runtime of the selected episodes, identifying a related program series that is related to the program series and that has not been consumed in connection with the user profile; selecting one or more episodes of the related program series; generating a virtual content source for the current binge watching session based on the selected episodes of the program series and based on the selected one or more episodes of the related program series; and generating for display the virtual content source including identifiers of the selected episodes of the program series and identifiers of the selected one or more episodes of the related program series, wherein the display of the virtual content source indicates that, during the current binge watching session, each of the selected episodes of the program series are to be played prior to the selected one or more episodes of the related program series. 2. The method of claim 1 , wherein determining the predicted number of episodes of the program series likely to be consumed during the current binge watching session associated with the user profile comprises: determining a number of episodes of the program series consumed during a previous binge watching session associated with the user profile; and determining the predicted number of episodes of the program series likely to be consumed during the current binge watching session based at least in part on the determined number of episodes of the program series consumed during the previous binge watching session. 3. The method of claim 1 , wherein the virtual content source is generated for display simultaneously with a plurality of media asset indicators corresponding to at least one other content source. 4. The method of claim 1 , wherein generating the virtual content source further comprises retrieving the plurality of the next episodes of the program series from a plurality of content sources. 5. The method of claim 1 , wherein determining the predicted number of episodes of the program series likely to be consumed during the current binge watching session is further based on at least one of a time of day and a day of the week associated with a prior binge watching session. 6. The method of claim 1 , further comprising: retrieving, from a database, a data structure, wherein the data structure comprises a plurality of indicators; extracting, from the data structure, a first indicator of the plurality of indicators corresponding to the program series, wherein the first indicator indicates a total number of episodes of the program series consumed in association with the user profile; and in response to determining that the total number of episodes of the program series consumed in association with the user profile is more than one, extracting, from the data structure, a second indicator of the plurality of indicators corresponding to the program series, wherein the second indicator indicates a first number of binge watching sessions during which at least one episode of the program series was consumed in association with the user profile. 7. The method of claim 6 , further comprising: extracting, from the data structure, a third indicator of the plurality of indicators corresponding to the program series, wherein the third indicator indicates a second number of binge watching sessions during which at least two episodes of the program series have been consumed in association with the user profile; in response to determining that the second number of binge watching sessions during which at least two episodes of the program series consumed in association with the user profile is more than one, determining, based on the first indicator of the plurality of indicators corresponding to the program series, the plurality of next episodes of the program series that have not been consumed in association with the user profile; and determining the predicted number of episodes of the program series likely to be consumed during the current binge watching session based on a third number of episodes during the second number of binge watching sessions. 8. The method of claim 7 , further comprising: extracting, from the data structure, a fourth indicator of the plurality of indicators corresponding to the program series, wherein the fourth indicator indicates a length of time the program series was consumed during the first number of binge watching sessions; and determining the predicted number of episodes of the program series likely to be consumed during the current binge watching session based on the length of time. 9. The method of claim 1 , further comprising: determining a number episodes of the program series consumed during a previous binge watching session associated with the user profile; and determining a number of the one or more episodes of the related program series to include in the virtual content source based on a difference between the number of episodes of the program series consumed during the previous binge watching session and the predicted number of episodes of the program series. 10. The method of claim 1 , wherein the length of time is based on an average amount of time that a user of the user profile consumes content during a plurality of previous binge watching sessions. 11. A system comprising: computer memory; control circuitry configured to: determine a predicted number of episodes of a program series likely to be consumed during a current binge watching session associated with a user profile, wherein the user profile is stored in the computer memory; select the predicted number of episodes from a plurality of next episodes of the program series; determine whether a length of time associated with the current binge watching session is greater than a total runtime of the selected episodes of the program series; in response to determining that the length of time associated with the current binge watching session is greater than the total runtime of the selected episodes, identify a related program series that is related to the program series and that has not been consumed in connection with the user profile; select one or more episodes of the related program series; generate a virtual content source for the current binge watching session based on the selected episodes of the program series and based on the selected one or more episodes of the related program series; and generate for display the virtual content source including identifiers of the selected episodes of the program series and identifiers of the selected one or more episodes of the related program series, wherein the display of the virtual content source indicates that, during the current binge watching session, each of the selected episodes of the program series are to be played prior to the selected one or more episodes of the related program series. 12. The system of claim 11 , wherein the control circuitry is configured to determine the predicted number of episodes of the program series likely to be consumed during the current binge watching session associated with the user profile by: determining a
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