Patents by Inventor Tauhid Rashed Zaman

Tauhid Rashed Zaman 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: 20190385100
    Abstract: A system for modeling an entity includes a prediction module configured to identify one of a plurality of entities using a set of criteria filters to construct a model for the entity with model features built from data about the entity. The prediction module computes a diffusion model coefficient ? based on a diffusion parameter vector ?, and a drift model coefficient ? based on a drift parameter vector ?. The module computes a predicted entity success probability and a success interval confidence interval. A portfolio selection module is configured to receive a score measuring success for the plurality of entities based on the model, order the scores in a rank order, and form a portfolio from top n scoring entities. A prediction interpretation module receives parameter vectors ? and ? and entity model coefficients ? and ? and uses distributions of ? and ? to correlate entity features with success prediction.
    Type: Application
    Filed: June 11, 2019
    Publication date: December 19, 2019
    Inventors: Tauhid Rashed Zaman, David Hunter, Ajay Saini
  • Patent number: 9720975
    Abstract: An engine and method for tracking the influence of an entity operating within a social network are presented. A query containing social network content is received. A database for entries referencing the social network content is searched, and interactions between an entity participating within the social network and the social network content are identified. A dynamic interaction network (DIN) of a plurality of the entities is identified and a dynamic influence score for an entity in the query specific DIN is calculated.
    Type: Grant
    Filed: January 30, 2013
    Date of Patent: August 1, 2017
    Assignee: Massachusetts Institute of Technology
    Inventors: Tauhid Rashed Zaman, Devavrat D. Shah
  • Patent number: 9256829
    Abstract: One or more techniques and/or systems are disclosed for predicting propagation of a message on a social network. A predictive model is trained to determine a probability of propagation of information on the social network using both positive and negative information propagation feedback, which may be collected while monitoring the social network over a desired period of time for information propagation. A particular message can be input to the predictive model, which can determine a probability of propagation of the message on the social network, such as how many connections may receive at least a portion of the message and/or a likelihood of at least a portion of the message reaching respective connections in the social network.
    Type: Grant
    Filed: January 19, 2015
    Date of Patent: February 9, 2016
    Inventors: Tauhid Rashed Zaman, Jurgen Anne Francois Marie Van Gael, David Stern, Ralf Herbrich, Gilad Lotan
  • Publication number: 20150134579
    Abstract: One or more techniques and/or systems are disclosed for predicting propagation of a message on a social network. A predictive model is trained to determine a probability of propagation of information on the social network using both positive and negative information propagation feedback, which may be collected while monitoring the social network over a desired period of time for information propagation. A particular message can be input to the predictive model, which can determine a probability of propagation of the message on the social network, such as how many connections may receive at least a portion of the message and/or a likelihood of at least a portion of the message reaching respective connections in the social network.
    Type: Application
    Filed: January 19, 2015
    Publication date: May 14, 2015
    Inventors: Tauhid Rashed Zaman, Jurgen Anne Francois Marie Van Gael, David Stern, Ralf Herbrich, Gilad Lotan
  • Patent number: 8938407
    Abstract: One or more techniques and/or systems are disclosed for predicting propagation of a message on a social network. A predictive model is trained to determine a probability of propagation of information on the social network using both positive and negative information propagation feedback, which may be collected while monitoring the social network over a desired period of time for information propagation. A particular message can be input to the predictive model, which can determine a probability of propagation of the message on the social network, such as how many connections may receive at least a portion of the message and/or a likelihood of at least a portion of the message reaching respective connections in the social network.
    Type: Grant
    Filed: June 17, 2013
    Date of Patent: January 20, 2015
    Assignee: Microsoft Corporation
    Inventors: Tauhid Rashed Zaman, Jurgen Anne Francois Marie Van Gael, David Stern, Ralf Herbrich, Gilad Lotan
  • Publication number: 20130282631
    Abstract: One or more techniques and/or systems are disclosed for predicting propagation of a message on a social network. A predictive model is trained to determine a probability of propagation of information on the social network using both positive and negative information propagation feedback, which may be collected while monitoring the social network over a desired period of time for information propagation. A particular message can be input to the predictive model, which can determine a probability of propagation of the message on the social network, such as how many connections may receive at least a portion of the message and/or a likelihood of at least a portion of the message reaching respective connections in the social network.
    Type: Application
    Filed: June 17, 2013
    Publication date: October 24, 2013
    Inventors: Tauhid Rashed Zaman, Jurgen Anne Francois Marie Van Gael, David Stern, Ralf Herbrich, Gilad Lotan
  • Patent number: 8473437
    Abstract: One or more techniques and/or systems are disclosed for predicting propagation of a message on a social network. A predictive model is trained to determine a probability of propagation of information on the social network using both positive and negative information propagation feedback, which may be collected while monitoring the social network over a desired period of time for information propagation. A particular message can be input to the predictive model, which can determine a probability of propagation of the message on the social network, such as how many connections may receive at least a portion of the message and/or a likelihood of at least a portion of the message reaching respective connections in the social network.
    Type: Grant
    Filed: December 17, 2010
    Date of Patent: June 25, 2013
    Assignee: Microsoft Corporation
    Inventors: Tauhid Rashed Zaman, Jurgen Anne Francois Marie Van Gael, David Stern, Ralf Herbrich, Gilad Lotan
  • Publication number: 20120158630
    Abstract: One or more techniques and/or systems are disclosed for predicting propagation of a message on a social network. A predictive model is trained to determine a probability of propagation of information on the social network using both positive and negative information propagation feedback, which may be collected while monitoring the social network over a desired period of time for information propagation. A particular message can be input to the predictive model, which can determine a probability of propagation of the message on the social network, such as how many connections may receive at least a portion of the message and/or a likelihood of at least a portion of the message reaching respective connections in the social network.
    Type: Application
    Filed: December 17, 2010
    Publication date: June 21, 2012
    Applicant: Microsoft Corporation
    Inventors: Tauhid Rashed Zaman, Jurgen Anne Francois Marie Van Gael, David Stern, Ralf Herbrich, Gilad Lotan