Abstract: A method includes obtaining, using at least one processor of an electronic device, one or more instance level supervised artificial intelligence (AI) models. The method also includes obtaining, using the at least one processor, aggregated level label information related to the one or more instance level supervised AI models. The method further includes obtaining, using the at least one processor, instance level feature information related to the one or more instance level supervised AI models. In addition, the method includes training, using the at least one processor, the one or more instance level supervised AI models using the instance level feature information and the aggregated level label information to obtain one or more trained instance level supervised AI models.
Type:
Application
Filed:
June 23, 2021
Publication date:
December 29, 2022
Inventors:
Tomasz Palczewski, Lenin Mookiah, Yingnan Zhu, Hari Nayar, Praveen Pratury
Abstract: A method includes providing a Fibonacci confidence interval level on user program viewership data to distinguish user interest level in different linear entertainment programs. The method also includes creating a behavior shift feature space for acquiring information about user behavior over time based on a behavior sequence, a first derivative on the behavior sequence, and a second derivative on the behavior sequence. The method further includes utilizing, based on a trained machine learning model, a transformer structure and attention to map user data from the behavior shift feature space into a prediction of the Fibonacci confidence interval level.
Type:
Application
Filed:
November 21, 2022
Publication date:
May 23, 2024
Inventors:
Xiangyuan Zhao, Yingnan Zhu, Hong-Hoe Kim, Tomasz J. Palczewski, Anirudh Rao, Hari Babu Nayar, Chaitanya Praveen Pratury
Abstract: A method includes providing a Fibonacci confidence interval level on user program viewership data to distinguish user interest level in different linear entertainment programs. The method also includes creating a behavior shift feature space for acquiring information about user behavior over time based on a behavior sequence, a first derivative on the behavior sequence, and a second derivative on the behavior sequence. The method further includes utilizing, based on a trained machine learning model, a transformer structure and attention to map user data from the behavior shift feature space into a prediction of the Fibonacci confidence interval level.
Type:
Grant
Filed:
November 21, 2022
Date of Patent:
August 20, 2024
Assignee:
Samsung Electronics Co., Ltd.
Inventors:
Xiangyuan Zhao, Yingnan Zhu, Hong-Hoe Kim, Tomasz J. Palczewski, Anirudh Rao, Hari Babu Nayar, Chaitanya Praveen Pratury
Abstract: A method implemented by one or more computing systems includes accessing a first data matrix including a plurality of row data and a plurality of column data. The method further includes providing, to a first generative adversarial network (GAN), a first data input including a plurality of row vectors corresponding to the plurality of row data, and providing, to a second GAN, a second data input including a plurality of column vectors corresponding to the plurality of column data. The method further includes generating, by simultaneous co-clustering the plurality of row vectors and the plurality of column vectors by the first GAN and the second GAN, a co-clustered correlation matrix based on the plurality of row vectors and the plurality of column vectors. The method further includes the co-clustered correlation matrix includes co-clustered associations between the plurality of row data and the plurality of column data.
Type:
Application
Filed:
September 24, 2020
Publication date:
April 1, 2021
Inventors:
Hyun Chul Lee, Jaejun Lee, Tomasz Jan Palczewski
Abstract: A method implemented by one or more computing systems includes accessing a first data matrix including a plurality of row data and a plurality of column data. The method further includes providing, to a first generative adversarial network (GAN), a first data input including a plurality of row vectors corresponding to the plurality of row data, and providing, to a second GAN, a second data input including a plurality of column vectors corresponding to the plurality of column data. The method further includes generating, by simultaneous co-clustering the plurality of row vectors and the plurality of column vectors by the first GAN and the second GAN, a co-clustered correlation matrix based on the plurality of row vectors and the plurality of column vectors. The method further includes the co-clustered correlation matrix includes co-clustered associations between the plurality of row data and the plurality of column data.
Type:
Grant
Filed:
September 24, 2020
Date of Patent:
August 20, 2024
Assignee:
Samsung Electronics Co., Ltd.
Inventors:
Hyun Chul Lee, Jaejun Lee, Tomasz Jan Palczewski
Abstract: A method includes obtaining, using at least one processing device of an electronic device, a video including multiple scenes at a first aspect ratio. The method also includes performing, using the at least one processing device, backward optical flow estimation and forward optical flow estimation for each of the multiple scenes to select an image frame having a largest missing area. The method further includes performing, using the at least one processing device, outpainting on the image frame having the largest missing area to generate a first outpainted image frame at a second aspect ratio different from the first aspect ratio. In addition, the method includes performing, using the at least one processing device, backward optical flow estimation and forward optical flow estimation using the first outpainted image frame to generate additional outpainted image frames in the multiple scenes at the second aspect ratio.
Type:
Application
Filed:
January 10, 2024
Publication date:
February 20, 2025
Inventors:
Tomasz Jan Palczewski, Anirudh Rao, Yingnan Zhu, Hong-Hoe Kim
Abstract: A method implemented by one or more computing systems includes accessing content viewing data associated with a first user account, wherein the first user account is associated with one or more client devices. The content viewing data includes temporal-based content viewing data. The method further includes determining, using one or more sequence models, a set of content viewing features based on the temporal-based content viewing data, and concatenating the content viewing features into a single computational array. The method further includes providing, through one or more dense layers of a deep-learning model, the single computational array to an output layer of the deep-learning model, and calculating, based on the output layer, one or more probabilities for one or more labels for the first user account. Each label includes a predicted attribute for the first user account.
Type:
Application
Filed:
August 4, 2020
Publication date:
February 10, 2022
Inventors:
Tomasz Jan Palczewski, Praveen Pratury, Hyun Chul Lee, Hyun-Woo Kim
Abstract: A method includes obtaining (i) device data associated with multiple electronic devices and (ii) advertisement data associated with one or more advertisement campaigns. The method also includes identifying first features and second features, where the first features correspond to the device data and the second features correspond to the advertisement data. The method further includes generating a graph relating usage history of the multiple electronic devices and one or more advertisement genres. The method also includes identifying a specified electronic device from among the multiple electronic devices and an advertisement segment from among the one or more advertisement campaigns using the first features, the second features, and the graph. In addition, the method includes providing the advertisement segment to the specified electronic device.
Type:
Grant
Filed:
September 30, 2022
Date of Patent:
June 13, 2023
Assignee:
Samsung Electronics Co., Ltd.
Inventors:
Hong-Hoe Kim, Tomasz J. Palczewski, Yingnan Zhu, Xiangyuan Zhao, Hari Babu Nayar, Chaitanya Praveen Pratury
Abstract: A method includes obtaining, based on a sequential graph-based model, gaming exposure information over time, where the gaming exposure information includes device-level preferences and household-level preferences. The method also includes combining one or more raw user behavior sessions into a gameplay session based on the obtained gaming exposure information. The method further includes providing a scoring metric to (i) check an extent of multi-matching in the obtained gaming exposure information and (ii) remove untrustworthy gaming exposures from the obtained gaming exposure information. In addition, the method includes generating, based on a feature engineering pipeline, one or more game segments running in a production environment, where the one or more game segments are identified for ancillary content based on inferences by a machine learning model trained using the gaming exposure information.
Type:
Application
Filed:
November 29, 2022
Publication date:
May 2, 2024
Inventors:
Anirudh Rao, Tomasz J. Palczewski, Yingnan Zhu, Hong-Hoe Kim, Xiangyuan Zhao, Hari Babu Nayar, Chaitanya Praveen Pratury
Abstract: A method implemented by one or more computing systems includes accessing content viewing data associated with a first user account, wherein the first user account is associated with one or more client devices. The content viewing data includes temporal-based content viewing data. The method further includes determining, using one or more sequence models, a set of content viewing features based on the temporal-based content viewing data, and concatenating the content viewing features into a single computational array. The method further includes providing, through one or more dense layers of a deep-learning model, the single computational array to an output layer of the deep-learning model, and calculating, based on the output layer, one or more probabilities for one or more labels for the first user account. Each label includes a predicted attribute for the first user account.
Type:
Grant
Filed:
August 4, 2020
Date of Patent:
July 25, 2023
Assignee:
Samsung Electronics Co., Ltd.
Inventors:
Tomasz Jan Palczewski, Praveen Pratury, Hyun Chul Lee, Hyun-Woo Kim