Patents by Inventor Juan Pablo Bottaro

Juan Pablo Bottaro 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: 11586731
    Abstract: In an embodiment, the disclosed technologies include identifying a content item of a first digital data source as a candidate for linking with a target entity of a second digital data source by matching a candidate entity mentioned in the content item to the target entity in accordance with semantic similarity data computed between the candidate entity and the target entity; inputting at least one feature of the content item and at least one feature of the target entity to a set of digital models that analyze the at least one feature of the content item and the at least one feature of the target entity and determine and output qualitative data; based on the qualitative data, determining link risk data; based on the link risk data and the semantic similarity data, and determining whether to generate a link between the content item and the target entity.
    Type: Grant
    Filed: September 26, 2019
    Date of Patent: February 21, 2023
    Assignee: Microsoft Technology Licensing, LLC
    Inventors: Juan Pablo Bottaro, Daria Bogdanova, Maria Laura Jedrzejowska
  • Patent number: 11144830
    Abstract: In an example, for each of one or more terms in a text document, one or more entities to which the term potentially maps are identified. The text document includes at least one ambiguous term. One or more features are extracted from the text document. An attention model is applied to the text document based on the extracted one or more features, resulting in an attention weight being applied to each of the one or more terms in the text document. The one or more terms are encoded based on the attention weights. Each of one or more ambiguous terms is classified based on the encoded terms, the classification assigning a value to each different entity that each ambiguous term potentially maps to. A minimum entropy loss function is evaluated using the classification, and results are back-propagated to the attention model.
    Type: Grant
    Filed: November 21, 2017
    Date of Patent: October 12, 2021
    Assignee: Microsoft Technology Licensing, LLC
    Inventors: Juan Pablo Bottaro, Majid Yazdani
  • Publication number: 20210097178
    Abstract: In an embodiment, the disclosed technologies include identifying a content item of a first digital data source as a candidate for linking with a target entity of a second digital data source by matching a candidate entity mentioned in the content item to the target entity in accordance with semantic similarity data computed between the candidate entity and the target entity; inputting at least one feature of the content item and at least one feature of the target entity to a set of digital models that analyze the at least one feature of the content item and the at least one feature of the target entity and determine and output qualitative data; based on the qualitative data, determining link risk data; based on the link risk data and the semantic similarity data, and determining whether to generate a link between the content item and the target entity.
    Type: Application
    Filed: September 26, 2019
    Publication date: April 1, 2021
    Inventors: Juan Pablo Bottaro, Daria Bogdanova, Maria Laura Jedrzejowska
  • Publication number: 20190156212
    Abstract: In an example, for each of one or more terms in a text document, one or more entities to which the term potentially maps are identified. The text document includes at least one ambiguous term. One or more features are extracted from the text document. An attention model is applied to the text document based on the extracted one or more features, resulting in an attention weight being applied to each of the one or more terms in the text document. The one or more terms are encoded based on the attention weights. Each of one or more ambiguous terms is classified based on the encoded terms, the classification assigning a value to each different entity that each ambiguous term potentially maps to. A minimum entropy loss function is evaluated using the classification, and results are back-propagated to the attention model.
    Type: Application
    Filed: November 21, 2017
    Publication date: May 23, 2019
    Inventors: Juan Pablo Bottaro, Majid Yazdani