Patents by Inventor Zhenwen Dai

Zhenwen Dai has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Publication number: 20240137394
    Abstract: Simulator augmented content selection is provided by initializing a content selection object according to session initialization parameter values associated with a simulated media content playback session. The content selection object corresponds to a candidate content selection machine learning model trained to predict selectable content media items for at least one simulated user. A simulated session including a sequence of predicted simulated user next actions and one or more predicted sets of selectable content items are generated by applying a simulated user model to content items identified by the initialized content selection object, where the simulated user model is trained to predict a next action of the simulated user in response to a simulated playback input received from the simulated user and each set of the selectable content items are correlated to each next action in the sequence of predicted simulated user next actions.
    Type: Application
    Filed: October 24, 2022
    Publication date: April 25, 2024
    Applicant: Spotify AB
    Inventors: Joseph Cauteruccio, Mehdi Ben Ayed, Zhenwen Dai
  • Publication number: 20240119279
    Abstract: Contrastive learning is used to learn an alternative embedding. A subtree replacement strategy generates structurally similar pairs of samples from an input space for use in contrastive learning. The resulting embedding captures more of the structural proximity relationships of the input space and improves Bayesian optimization performance when applied to tasks such as fitting and optimization.
    Type: Application
    Filed: November 16, 2022
    Publication date: April 11, 2024
    Applicant: Spotify AB
    Inventors: Zhenwen Dai, CiarĂ¡n M. Gilligan-Lee, Josh C. Tingey
  • Publication number: 20230419187
    Abstract: Methods, systems and computer program products are provided for content generation. A distribution of policies is defined based on an action space. Distribution parameters are received from a reinforcement learning (RL) algorithm. In turn, a policy is randomly sampled from the distribution of policies. A candidate content item is generated using the sampled policy. A quality of the candidate content item is measured based on a predefined quality criteria and a parameter model is adjusted as specified by the reinforcement learning algorithm to obtain a plurality of updated distribution parameters. Environment settings are passed to a trained parameter model to obtain a plurality of policy distribution parameters. A predetermined number of policies from the distribution of policies are then sampled and the plurality of environment settings are passed to the predetermined number of sampled policies to obtain at least one content item.
    Type: Application
    Filed: June 28, 2022
    Publication date: December 28, 2023
    Applicant: Spotify AB
    Inventors: Zhenwen Dai, Joseph Cauteruccio, Federico Tomasi, Mehdi Ben Ayed
  • Patent number: 11727221
    Abstract: A system implements a dynamic correlated topic model (DCTM) to model an evolution of topic popularity, topic representation, and topic correlation within a set of documents, or other dataset, that spans a period of time. For example, the DCTM receives the set of documents and a quantity of topics for modeling. The DCTM processes the set by analyzing words of the documents, identifying word clusters representing the topics, and computing, for each topic, various distributions using continuous processes to capture a popularity, representation, and correlation with other topics across the period of time. In other examples, the dataset are user listening sessions comprised of media content items. Media content metadata (e.g., artist or genre) of the media content items, similar to words of a document, can be analyzed and clustered to represent topics for modeling by the DCTM.
    Type: Grant
    Filed: July 17, 2020
    Date of Patent: August 15, 2023
    Assignee: Spotify AB
    Inventors: Praveen Chandar Ravichandran, Mounia Lalmas-Roelleke, Federico Tomasi, Zhenwen Dai, Gal Levy-Fix
  • Publication number: 20220147716
    Abstract: A system implements a dynamic word correlated topic model (DWCTM) to model an evolution of topic popularity, word embedding, and topic correlation within a set of documents, or other dataset, that spans a period of time. For example, the DWCTM receives the set of documents and a quantity of topics for modeling. The DWCTM processes the set computing, for each topic, various distributions to capture a popularity, word embedding, and correlation with other topics across the period of time. In other examples, a dataset of user listening sessions comprised of media content items for modeling by the DWCTM. Media content metadata (e.g., artist or genre) of the media content items, similar to words of a document, can be modeled by the DWCTM.
    Type: Application
    Filed: November 15, 2021
    Publication date: May 12, 2022
    Inventors: Federico TOMASI, Zhenwen DAI, Mounia LALMAS-ROELLEKE
  • Publication number: 20220108125
    Abstract: Disclosed examples include an automated online experimentation mechanism that can perform model selection from a large pool of models with a relatively small number of online experiments. The probability distribution of the metric of interest that contains the model uncertainty is derived from a Bayesian surrogate model trained using historical logs. Disclosed techniques can be applied to identify a superior model by sequentially selecting and deploying a list of models from the candidate set that balance exploration-exploitation.
    Type: Application
    Filed: October 5, 2020
    Publication date: April 7, 2022
    Inventors: Zhenwen Dai, Praveen Chandar Ravichandran, Ghazal Fazelnia, Benjamin Carterette, Mounia Lalmas-Roelleke
  • Publication number: 20220019750
    Abstract: A system implements a dynamic correlated topic model (DCTM) to model an evolution of topic popularity, topic representation, and topic correlation within a set of documents, or other dataset, that spans a period of time. For example, the DCTM receives the set of documents and a quantity of topics for modeling. The DCTM processes the set by analyzing words of the documents, identifying word clusters representing the topics, and computing, for each topic, various distributions using continuous processes to capture a popularity, representation, and correlation with other topics across the period of time. In other examples, the dataset are user listening sessions comprised of media content items. Media content metadata (e.g., artist or genre) of the media content items, similar to words of a document, can be analyzed and clustered to represent topics for modeling by the DCTM.
    Type: Application
    Filed: July 17, 2020
    Publication date: January 20, 2022
    Applicant: Spotify AB
    Inventors: Praveen Chandar Ravichandran, Mounia Lalmas-Roelleke, Federico Tomasi, Zhenwen Dai, Gal Levy-Fix
  • Patent number: 9842274
    Abstract: Methods and systems for detecting an object part location based on an extended date-driven detection. A specific relevance value between configurations of parts with respect to a set of training images annotated with annotating objects can be defined. A similarity learning algorithm can be applied with respect to the parts to obtain a similarity function based on the similarity between the part configurations. The similarity learning algorithm receives a set of positive pair having similar part configuration and a negative pair having different configuration and returns the similarity function that tends to assign a high score to new positive pairs and a low score to negative pairs. A similarity between a new image and the training images can be measured utilizing the learned similarity function to obtain a neighbor image and a visible and/or non-visible part location with respect to the image can be predicted based on the neighbor image.
    Type: Grant
    Filed: March 28, 2014
    Date of Patent: December 12, 2017
    Assignee: Xerox Corporation
    Inventors: Jose-Antonio Rodriguez-Serrano, Zhenwen Dai
  • Publication number: 20150278632
    Abstract: Methods and systems for detecting an object part location based on an extended date-driven detection. A specific relevance value between configurations of parts with respect to a set of training images annotated with annotating objects can be defined. A similarity learning algorithm can be applied with respect to the parts to obtain a similarity function based on the similarity between the part configurations. The similarity learning algorithm receives a set of positive pair having similar part configuration and a negative pair having different configuration and returns the similarity function that tends to assign a high score to new positive pair and a low score to negative pairs. A similarity between a new image and the training images can be measured utilizing the learned similarity function to obtain a neighbor image and a visible and/or non-visible part location with respect to the image can be predicted based on the neighbor image.
    Type: Application
    Filed: March 28, 2014
    Publication date: October 1, 2015
    Applicant: Xerox Corporation
    Inventors: Jose-Antonio Rodriguez-Serrano, Zhenwen Dai