Patents by Inventor Kritarth Anand

Kritarth Anand 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).

  • Patent number: 10740690
    Abstract: An online system predicts topics for content items. The online system provides one or more topic labels for a user to apply concurrently while a user is composing a post, in response to requests periodically received from the user's device. A request includes information such as content composed by the user and contextual information. The online system employs machine learning techniques to analyze content composed by a user and contextual information thereby to predict topic labels. Different machine learning models for classifying individual topic labels, identifying relevant topic labels, and/or detecting changes in existing topic predictions are developed. Some machine learning models predict topics for full content and some predict topics for partial content. The online system trains the machine learning models to ensure accurate topic predictions are provided timely. The online system employs various machine learning model training methods such as active training and gradient training.
    Type: Grant
    Filed: March 24, 2017
    Date of Patent: August 11, 2020
    Assignee: Facebook, Inc.
    Inventors: Jeffrey William Pasternack, David Vickrey, Justin MacLean Coughlin, Prasoon Mishra, Austen Norment McDonald, Max Christian Eulenstein, Jianfu Chen, Kritarth Anand, Polina Kuznetsova
  • Publication number: 20180276561
    Abstract: An online system predicts topics for content items. The online system provides one or more topic labels for a user to apply concurrently while a user is composing a post, in response to requests periodically received from the user's device. A request includes information such as content composed by the user and contextual information. The online system employs machine learning techniques to analyze content composed by a user and contextual information thereby to predict topic labels. Different machine learning models for classifying individual topic labels, identifying relevant topic labels, and/or detecting changes in existing topic predictions are developed. Some machine learning models predict topics for full content and some predict topics for partial content. The online system trains the machine learning models to ensure accurate topic predictions are provided timely. The online system employs various machine learning model training methods such as active training and gradient training.
    Type: Application
    Filed: March 24, 2017
    Publication date: September 27, 2018
    Inventors: Jeffrey William Pasternack, David Vickrey, Justin MacLean Coughlin, Prasoon Mishra, Austen Norment McDonald, Max Christian Eulenstein, Jianfu Chen, Kritarth Anand, Polina Kuznetsova