Patents by Inventor David M. Goldblatt

David M. Goldblatt 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: 10223464
    Abstract: In one embodiment, a method includes receiving a search query from a client system of a first user; parsing the search query into n-grams, and calculating confidence-scores for entities in a set of query-analysis-entities based on the n-grams, each confidence-score representing a probability that one or more of the n-grams are intended to reference a respective entity; determining a set of search results matching the search query, and calculating entity-frequencies corresponding to entities in a set of results-analysis-entities based on a histogram analysis of the set of search results; calculating a filter-score entities in a set of prospective-entities, which includes entities from the set of query-analysis-entities and the set of results-analysis-entities, based on the respective confidence-score and entity-frequency; and sending, to the client system, suggested filters corresponding to entities having a filter-score greater than a threshold filter-score, the suggested filters being selectable to modify th
    Type: Grant
    Filed: August 4, 2016
    Date of Patent: March 5, 2019
    Assignee: Facebook, Inc.
    Inventors: Melissa Rose Winstanley, Evan John Rocha, David M. Goldblatt, Brinda Mehta, Daniel Cabral Francisco, Krishna Jayaram Kalpathy, Prerna Totla, Eric Ringger
  • Patent number: 10127316
    Abstract: In one embodiment, a method includes receiving unstructured text from a user of a social-networking system, determining whether the unstructured text includes a request for a recommendation, identifying one or more first entity names in the unstructured text, generating a structured query based upon the one or more first entity names, identifying, in the social graph, one or more second entity names corresponding to the structured query, and presenting the one or more second entity names and the unstructured text in a social context of the user. The unstructured text may include text of a post or message generated by the user on a social-networking system. A score may be generated based on the unstructured text to determine whether the text includes a request for recommendation using a machine-learning model based on comparison of the unstructured text to the one or more predetermined words associated with requests for recommendation.
    Type: Grant
    Filed: August 8, 2014
    Date of Patent: November 13, 2018
    Assignee: Facebook, Inc.
    Inventors: Russell Lee-Goldman, Lada Ariana Adamic, David M. Goldblatt, Yuval Kesten, Mark Andrew Rich, Nidhi Gupta, Amy Campbell, Andrew Rocco Tresolini Fiore
  • Publication number: 20180039647
    Abstract: In one embodiment, a method includes receiving a search query from a client system of a first user; parsing the search query into n-grams, and calculating confidence-scores for entities in a set of query-analysis-entities based on the n-grams, each confidence-score representing a probability that one or more of the n-grams are intended to reference a respective entity; determining a set of search results matching the search query, and calculating entity-frequencies corresponding to entities in a set of results-analysis-entities based on a histogram analysis of the set of search results; calculating a filter-score entities in a set of prospective-entities, which includes entities from the set of query-analysis-entities and the set of results-analysis-entities, based on the respective confidence-score and entity-frequency; and sending, to the client system, suggested filters corresponding to entities having a filter-score greater than a threshold filter-score, the suggested filters being selectable to modify th
    Type: Application
    Filed: August 4, 2016
    Publication date: February 8, 2018
    Inventors: Melissa Rose Winstanley, Evan John Rocha, David M. Goldblatt, Brinda Mehta, Daniel Cabral Francisco, Krishna Jayaram Kalpathy, Prerna Totla, Eric Ringger
  • Publication number: 20160042069
    Abstract: In one embodiment, a method includes receiving unstructured text from a user of a social-networking system, determining whether the unstructured text includes a request for a recommendation, identifying one or more first entity names in the unstructured text, generating a structured query based upon the one or more first entity names, identifying, in the social graph, one or more second entity names corresponding to the structured query, and presenting the one or more second entity names and the unstructured text in a social context of the user. The unstructured text may include text of a post or message generated by the user on a social-networking system. A score may be generated based on the unstructured text to determine whether the text includes a request for recommendation using a machine-learning model based on comparison of the unstructured text to the one or more predetermined words associated with requests for recommendation.
    Type: Application
    Filed: August 8, 2014
    Publication date: February 11, 2016
    Inventors: Russell Lee-Goldman, Lada Ariana Adamic, David M. Goldblatt, Yuval Kesten, Mark Andrew Rich, Nidhi Gupta, Amy Campbell, Andrew Rocco Tresolini Fiore