Patents by Inventor Hila Becker

Hila Becker 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: 8886636
    Abstract: A computer-implemented method is disclosed for determining a type of landing page to which to transfer web searchers that enter a particular query, the method comprising: classifying a landing page as one of a plurality of landing page classes with a trained classifier of a computer based on textual content of the landing page; determining, by the computer, characteristics of one or more query to be associated with the landing page; and choosing, with the computer, whether to retain or to change classification of the landing page to be associated with the one or more query based on relative average conversion rates of advertisements on a plurality of manually-classified landing pages when associated with the characteristics of the one or more query.
    Type: Grant
    Filed: December 23, 2008
    Date of Patent: November 11, 2014
    Assignee: Yahoo! Inc.
    Inventors: Evgeniy Gabrilovich, Andrei Broder, Bo Pang, Vanja Josifovski, Hila Becker
  • Publication number: 20140081994
    Abstract: A method of retrieving content from one or more media content sites may include identifying one or more event features corresponding to an event, automatically generating, by a computing device, a first set of one or more queries based on the identified event features, running, by the computing device, at least a portion of the first set of queries against one or more media content sites to generate a first content dataset comprising one or more media documents that satisfy the queries, creating a query model for each query based on one or more results retrieved for the query in the first content dataset, evaluating each query model against one or more of the identified event features to identify a match, and performing one or more of the following: filtering the queries based on their associated match, and ranking the queries based on their associated match.
    Type: Application
    Filed: August 9, 2013
    Publication date: March 20, 2014
    Applicant: THE TRUSTEES OF COLUMBIA UNIVERSITY IN THE CITY OF NEW YORK
    Inventors: Hila Becker, Mor Naaman, Luis Gravano
  • Patent number: 7945524
    Abstract: A machine learning system creates failure-susceptibility rankings for feeder cables in a utility's electrical distribution system. The machine learning system employs martingale boosting algorithms and Support Vector Machine (SVM) algorithms to generate a feeder failure prediction model, which is trained on static and dynamic feeder attribute data. Feeders are dynamically ranked by failure susceptibility and the rankings displayed to utility operators and engineers so that they can proactively service the distribution system to prevent local power outages. The feeder rankings may be used to redirect power flows and to prioritize repairs. A feedback loop is established to evaluate the responses of the electrical distribution system to field actions taken to optimize preventive maintenance programs.
    Type: Grant
    Filed: July 23, 2008
    Date of Patent: May 17, 2011
    Assignees: The Trustess of Columbia University in the City of New York, Consolidated Edison of New York, Inc.
    Inventors: Roger N. Anderson, Albert Boulanger, David L. Waltz, Phil Long, Marta Arias, Philip Gross, Hila Becker, Arthur Kressner, Mark Mastrocinque, Matthew Koenig, John A. Johnson
  • Publication number: 20100161605
    Abstract: A computer-implemented method is disclosed for determining a type of landing page to which to transfer web searchers that enter a particular query, the method comprising: classifying a landing page as one of a plurality of landing page classes with a trained classifier of a computer based on textual content of the landing page; determining, by the computer, characteristics of one or more query to be associated with the landing page; and choosing, with the computer, whether to retain or to change classification of the landing page to be associated with the one or more query based on relative average conversion rates of advertisements on a plurality of manually-classified landing pages when associated with the characteristics of the one or more query.
    Type: Application
    Filed: December 23, 2008
    Publication date: June 24, 2010
    Applicant: Yahoo! Inc.
    Inventors: Evgeniy Gabrilovich, Andrei Broder, Bo Pang, Vanja Josifovski, Hila Becker
  • Publication number: 20090157573
    Abstract: A machine learning system creates failure-susceptibility rankings for feeder cables in a utility's electrical distribution system. The machine learning system employs martingale boosting algorithms and Support Vector Machine (SVM) algorithms to generate a feeder failure prediction model, which is trained on static and dynamic feeder attribute data. Feeders are dynamically ranked by failure susceptibility and the rankings displayed to utility operators and engineers so that they can proactively service the distribution system to prevent local power outages. The feeder rankings may be used to redirect power flows and to prioritize repairs. A feedback loop is established to evaluate the responses of the electrical distribution system to field actions taken to optimize preventive maintenance programs.
    Type: Application
    Filed: July 23, 2008
    Publication date: June 18, 2009
    Applicants: The Trustees Of Columbia University In The City Of New York, Conedison, Inc.
    Inventors: Roger N. Anderson, Albert Boulanger, David L. Waltz, Phil Long, Arias Marta, Philip Gross, Hila Becker, Arthur Kressner, Mark Mastrocinque, Matthew Koenig, John A. Johnson