Patents by Inventor James Brinton Henderson

James Brinton Henderson 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: 10102478
    Abstract: Each computer of a peer-to-peer (P2P) network performs an iterative computer-based modeling task defined by a set of training data including at least some training data that are not accessible to the other computers of the P2P network, and by a set of parameters including a shared parameter. The modeling task optimizes an objective function comparing a model parameterized by the set of parameters with the training data. Each iteration includes: performing an iterative gradient step update of parameter values stored at the computer based on the objective function; receiving parameter values of the shared parameter from other computers of the P2P network; adjusting the parameter value of the shared parameter stored at the computer by averaging the received parameter values; and sending the parameter value of the shared parameter stored at the computer to other computers of the P2P network.
    Type: Grant
    Filed: June 26, 2015
    Date of Patent: October 16, 2018
    Assignee: Conduent Business Services, Inc.
    Inventors: Guillaume Bouchard, Julien Perez, James Brinton Henderson
  • Publication number: 20180018573
    Abstract: A system and method for making entailment inferences are disclosed. Entailment inferences are computed between semantic representations of text objects which, for a set of features, indicate whether the feature is known or unknown about the text object. A function of the semantic representations of first and second text objects is computed with an asymmetric vector space operator which differs depending on the entailment relationship.
    Type: Application
    Filed: July 12, 2016
    Publication date: January 18, 2018
    Applicant: Xerox Corporation
    Inventors: James Brinton Henderson, Diana Nicoleta Popa
  • Patent number: 9836453
    Abstract: A method for entity recognition employs document-level entity tags which correspond to mentions appearing in the document, without specifying their locations. A named entity recognition model is trained on features extracted from text samples tagged with document-level entity tags. A text document to be labeled is received, the text document being tagged with at least one document-level entity tag. A document-specific gazetteer is generated, based on the at least one document-level entity tag. The gazetteer includes a set of entries, one entry for each of a set of entity names. For a text sequence of the document, features for tokens of the text sequence are extracted. The features include document-specific features for tokens matching at least a part of the entity name of one of the gazetteer entries. Entity labels are predicted for the tokens in the text sequence with the named entity recognition model, based on the extracted features.
    Type: Grant
    Filed: August 27, 2015
    Date of Patent: December 5, 2017
    Assignee: Conduent Business Services, LLC
    Inventors: William Radford, Xavier Carreras, James Brinton Henderson
  • Publication number: 20170060835
    Abstract: A method for entity recognition employs document-level entity tags which correspond to mentions appearing in the document, without specifying their locations. A named entity recognition model is trained on features extracted from text samples tagged with document-level entity tags. A text document to be labeled is received, the text document being tagged with at least one document-level entity tag. A document-specific gazetteer is generated, based on the at least one document-level entity tag. The gazetteer includes a set of entries, one entry for each of a set of entity names. For a text sequence of the document, features for tokens of the text sequence are extracted. The features include document-specific features for tokens matching at least a part of the entity name of one of the gazetteer entries. Entity labels are predicted for the tokens in the text sequence with the named entity recognition model, based on the extracted features.
    Type: Application
    Filed: August 27, 2015
    Publication date: March 2, 2017
    Applicant: Xerox Corporation
    Inventors: William Radford, Xavier Carreras, James Brinton Henderson
  • Publication number: 20160379128
    Abstract: Each computer of a peer-to-peer (P2P) network performs an iterative computer-based modeling task defined by a set of training data including at least some training data that are not accessible to the other computers of the P2P network, and by a set of parameters including a shared parameter. The modeling task optimizes an objective function comparing a model parameterized by the set of parameters with the training data. Each iteration includes: performing an iterative gradient step update of parameter values stored at the computer based on the objective function; receiving parameter values of the shared parameter from other computers of the P2P network; adjusting the parameter value of the shared parameter stored at the computer by averaging the received parameter values; and sending the parameter value of the shared parameter stored at the computer to other computers of the P2P network.
    Type: Application
    Filed: June 26, 2015
    Publication date: December 29, 2016
    Inventors: Guillaume Bouchard, Julien Perez, James Brinton Henderson