Patents by Inventor Lavina Durgani

Lavina Durgani 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: 11593385
    Abstract: Documents needing to be analyzed for various reasons, such as financial crimes, are ranked by examining the topicality and sentiment present in each document for a given subject of interest. In one approach a given document is classified to determine its category, and entity recognition is used to identify the subject of interest. Passages from the document that relate to the entity are grouped and analyzed for sentiment to generate a sentiment score. Documents are then ranked based on the sentiment scores. In another approach, a classification probability score is computed for each passage representing a likelihood that the passage relates to a category of interest, and the document is ranked based on the sentiment scores and the classification probability scores. The category classification uses an ensemble of natural language text classifiers. One of the classifiers is a naïve Bayes classifier with feature vectors generated using Word2Vec modeling.
    Type: Grant
    Filed: November 21, 2018
    Date of Patent: February 28, 2023
    Assignee: International Business Machines Corporation
    Inventors: Mandar Mutalikdesai, Arjun Das, Ratnanu Ghosh-Roy, Sudarsan Lakshminarayanan, Veerababu Moodu, Raunak Swarnkar, Anagha M, Shrishti Aggarwal, Lavina Durgani
  • Patent number: 11030228
    Abstract: Documents needing to be analyzed for various reasons, such as financial crimes, are ranked by examining the topicality and sentiment present in each document for a given subject of interest. In one approach a given document is classified to determine its category, and entity recognition is used to identify the subject of interest. Passages from the document that relate to the entity are grouped and analyzed for sentiment to generate a sentiment score. Documents are then ranked based on the sentiment scores. In another approach, a classification probability score is computed for each passage representing a likelihood that the passage relates to a category of interest, and the document is ranked based on the sentiment scores and the classification probability scores. The category classification uses an ensemble of natural language text classifiers. One of the classifiers is a naïve Bayes classifier with feature vectors generated using Word2Vec modeling.
    Type: Grant
    Filed: November 21, 2018
    Date of Patent: June 8, 2021
    Assignee: International Business Machines Corporation
    Inventors: Mandar Mutalikdesai, Arjun Das, Ratnanu Ghosh-Roy, Sudarsan Lakshminarayanan, Veerababu Moodu, Raunak Swarnkar, Anagha M, Shrishti Aggarwal, Lavina Durgani
  • Patent number: 10984199
    Abstract: Sentiment analysis is targeted toward a specific subject of interest (or selected subjects) in a passage of natural language text. A dependency tree is generated for the passage, and subtrees are found that have sentiment polarities which contribute to the subject(s) of interest. A targeted sentiment score is computed for the subject(s) of interest based on sentiment expressed in those subtrees. Consecutively occurring nouns in the passage are collapsed into a noun phrase, as are possessives with ensuing nouns. The sentiment expressed in a given subtree can be modified using various linguistic heuristics. For example, sentiment polarity which is modified by a negation word may be inverted, sentiment polarity which is modified by an intensifying word may be increased, or sentiment polarity which is modified by a diluting word may be decreased.
    Type: Grant
    Filed: November 21, 2018
    Date of Patent: April 20, 2021
    Assignee: International Business Machines Corporation
    Inventors: Mandar Mutalikdesai, Anagha M, Sheetal Srivastava, Lavina Durgani
  • Patent number: 10963643
    Abstract: Sentiment analysis is targeted toward a specific subject of interest (or selected subjects) in a passage of natural language text. A dependency tree is generated for the passage, and subtrees are found that have sentiment polarities which contribute to the subject(s) of interest. A targeted sentiment score is computed for the subject(s) of interest based on sentiment expressed in those subtrees. Consecutively occurring nouns in the passage are collapsed into a noun phrase, as are possessives with ensuing nouns. The sentiment expressed in a given subtree can be modified using various linguistic heuristics. For example, sentiment polarity which is modified by a negation word may be inverted, sentiment polarity which is modified by an intensifying word may be increased, or sentiment polarity which is modified by a diluting word may be decreased.
    Type: Grant
    Filed: November 21, 2018
    Date of Patent: March 30, 2021
    Assignee: International Business Machines Corporation
    Inventors: Mandar Mutalikdesai, Anagha M, Sheetal Srivastava, Lavina Durgani
  • Publication number: 20200159754
    Abstract: Documents needing to be analyzed for various reasons, such as financial crimes, are ranked by examining the topicality and sentiment present in each document for a given subject of interest. In one approach a given document is classified to determine its category, and entity recognition is used to identify the subject of interest. Passages from the document that relate to the entity are grouped and analyzed for sentiment to generate a sentiment score. Documents are then ranked based on the sentiment scores. In another approach, a classification probability score is computed for each passage representing a likelihood that the passage relates to a category of interest, and the document is ranked based on the sentiment scores and the classification probability scores. The category classification uses an ensemble of natural language text classifiers. One of the classifiers is a naïve Bayes classifier with feature vectors generated using Word2Vec modeling.
    Type: Application
    Filed: November 21, 2018
    Publication date: May 21, 2020
    Inventors: Mandar Mutalikdesai, Arjun Das, Ratnanu Ghosh-Roy, Sudarsan Lakshminarayanan, Veerababu Moodu, Raunak Swarnkar, Anagha M, Shrishti Aggarwal, Lavina Durgani
  • Publication number: 20200159738
    Abstract: Documents needing to be analyzed for various reasons, such as financial crimes, are ranked by examining the topicality and sentiment present in each document for a given subject of interest. In one approach a given document is classified to determine its category, and entity recognition is used to identify the subject of interest. Passages from the document that relate to the entity are grouped and analyzed for sentiment to generate a sentiment score. Documents are then ranked based on the sentiment scores. In another approach, a classification probability score is computed for each passage representing a likelihood that the passage relates to a category of interest, and the document is ranked based on the sentiment scores and the classification probability scores. The category classification uses an ensemble of natural language text classifiers. One of the classifiers is a naïve Bayes classifier with feature vectors generated using Word2Vec modeling.
    Type: Application
    Filed: November 21, 2018
    Publication date: May 21, 2020
    Inventors: Mandar Mutalikdesai, Arjun Das, Ratnanu Ghosh-Roy, Sudarsan Lakshminarayanan, Veerababu Moodu, Raunak Swarnkar, Anagha M, Shrishti Aggarwal, Lavina Durgani
  • Publication number: 20200159831
    Abstract: Sentiment analysis is targeted toward a specific subject of interest (or selected subjects) in a passage of natural language text. A dependency tree is generated for the passage, and subtrees are found that have sentiment polarities which contribute to the subject(s) of interest. A targeted sentiment score is computed for the subject(s) of interest based on sentiment expressed in those subtrees. Consecutively occurring nouns in the passage are collapsed into a noun phrase, as are possessives with ensuing nouns. The sentiment expressed in a given subtree can be modified using various linguistic heuristics. For example, sentiment polarity which is modified by a negation word may be inverted, sentiment polarity which is modified by an intensifying word may be increased, or sentiment polarity which is modified by a diluting word may be decreased.
    Type: Application
    Filed: November 21, 2018
    Publication date: May 21, 2020
    Inventors: Mandar Mutalikdesai, Anagha M, Sheetal Srivastava, Lavina Durgani
  • Publication number: 20200159830
    Abstract: Sentiment analysis is targeted toward a specific subject of interest (or selected subjects) in a passage of natural language text. A dependency tree is generated for the passage, and subtrees are found that have sentiment polarities which contribute to the subject(s) of interest. A targeted sentiment score is computed for the subject(s) of interest based on sentiment expressed in those subtrees. Consecutively occurring nouns in the passage are collapsed into a noun phrase, as are possessives with ensuing nouns. The sentiment expressed in a given subtree can be modified using various linguistic heuristics. For example, sentiment polarity which is modified by a negation word may be inverted, sentiment polarity which is modified by an intensifying word may be increased, or sentiment polarity which is modified by a diluting word may be decreased.
    Type: Application
    Filed: November 21, 2018
    Publication date: May 21, 2020
    Inventors: Mandar Mutalikdesai, Anagha M, Sheetal Srivastava, Lavina Durgani