Patents by Inventor Aditya A Kalyanpur

Aditya A Kalyanpur 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: 11928488
    Abstract: A research assistant system may include a research tool and components and a user interface to discover and evidence answers to complex research questions. The research tools may include components to iteratively perform steps in a research process, including searching, analyzing, connecting, aggregating, synthesizing, and chaining together evidence from a diverse set of knowledge sources. The system may receive an input query and perform a semantic search for key concepts in a text corpus. A semantic parser may interpret the search results. The system may aggregate and synthesize information from interpreted results. The system may rank and score the aggregated results data and present data on the user interface. The user interface may include prompts to iteratively guide user input to explore evidentiary chains and connect research concepts to produce research results annotated by evidence passages.
    Type: Grant
    Filed: January 21, 2022
    Date of Patent: March 12, 2024
    Assignee: Elemental Cognition Inc.
    Inventors: David A. Ferrucci, Aditya A. Kalyanpur, Shirin Saleem, Jose Barrera, Gregory H. Burnham, Kailash Karthik Saravanakumar
  • Patent number: 11847575
    Abstract: A dynamic reasoning system may include a symbolic reasoning engine that iteratively calls a dynamic rule generator to answer an input query. The symbolic reasoning engine may determine a primary goal and/or secondary goals to generate proofs for the answer. The symbolic reasoning engine may call a rules component to provide rules to prove a current input goal. The rules component may use a static rule knowledge base and/or the dynamic rule generator to retrieve and rank rules relevant to the current input goal. The dynamic rule generator may generate new rules that lead to the current input goal. The dynamic rule generator may include a statistical model that generates unstructured or structured probabilistic rules based on context related to the input query. The symbolic reasoning engine may return a list of rules with confidence for explaining the answer to the input goal.
    Type: Grant
    Filed: September 1, 2020
    Date of Patent: December 19, 2023
    Assignee: Elemental Cognition Inc.
    Inventors: David Ferrucci, Aditya Kalyanpur, Jennifer Chu-Carroll, Thomas Breloff, Or Biran, David Buchanan
  • Publication number: 20230401467
    Abstract: A research assistant system may include a research tool and components and a user interface to discover and evidence answers to complex research questions. The research tools may include components to iteratively perform steps in a research process, including searching, analyzing, connecting, aggregating, synthesizing, and chaining together evidence from a diverse set of knowledge sources. The system may receive an input query and perform a semantic search for semantic concepts and relations in a text corpus. The system may receive domain rules to guide search. A semantic parser may interpret the search results. The system may aggregate and synthesize information from interpreted results. The system may rank the aggregated results data and present data on the user interface. The user interface may include filters to refine query results and highlight evidence snippets.
    Type: Application
    Filed: June 9, 2023
    Publication date: December 14, 2023
    Inventors: David A. Ferrucci, Aditya A. Kalyanpur, Shirin Saleem, Kailash Karthik Saravanakumar, Jose Barrera, Gregory H. Burnham
  • Patent number: 11809827
    Abstract: A research assistant system may include a research tool and components and a user interface to discover and evidence answers to complex research questions. The research tools may include components to iteratively perform steps in a research process, including searching, analyzing, connecting, aggregating, synthesizing, and chaining together evidence from a diverse set of knowledge sources. The system may receive an input query and perform a semantic search for key concepts in a text corpus. A semantic parser may interpret the search results. The system may aggregate and synthesize information from interpreted results. The system may rank and score the aggregated results data and present data on the user interface. The user interface may include prompts to iteratively guide user input to explore evidentiary chains and connect research concepts to produce research results annotated by evidence passages.
    Type: Grant
    Filed: January 21, 2022
    Date of Patent: November 7, 2023
    Assignee: Elemental Cognition Inc.
    Inventors: David A. Ferrucci, Shirin Saleem, Aditya A. Kalyanpur
  • Patent number: 11803401
    Abstract: A research assistant system may include a research tool and components and a user interface to discover and evidence answers to complex research questions. The research tools may include components to iteratively perform steps in a research process, including searching, analyzing, connecting, aggregating, synthesizing, and chaining together evidence from a diverse set of knowledge sources. The system may receive an input query and perform a semantic search for key concepts in a text corpus. A semantic parser may interpret the search results. The system may aggregate and synthesize information from interpreted results. The system may rank and score the aggregated results data and present data on the user interface. The user interface may include prompts to iteratively guide user input to explore evidentiary chains and connect research concepts to produce research results annotated by evidence passages.
    Type: Grant
    Filed: January 21, 2022
    Date of Patent: October 31, 2023
    Assignee: Elemental Cognition Inc.
    Inventors: David A. Ferrucci, Aditya A. Kalyanpur, Shirin Saleem, Jose Barrera
  • Patent number: 11797610
    Abstract: A natural language interfacing system may use a knowledge acquisition tool to obtain structured representations from user input text. The system may initiate interaction with a request for input and a partial statement with blank text slots labeled by field types. The system may receive input text to fill in a slot of the partial statement and perform semantic parsing on the input text to identify a trigger concept. The system may generate a list of templates defining different semantic frames for the trigger concept. A generated template may include additional generated slots and/or suggested slot-fillers to guide user input. In response to a template selection, the partial statement includes the trigger concept annotated with a semantic frame. This process is repeated by iteratively updating the list of templates until the statement is completed. The statement is mapped to a structured representation including semantic frames.
    Type: Grant
    Filed: September 15, 2020
    Date of Patent: October 24, 2023
    Assignee: Elemental Cognition Inc.
    Inventors: David Ferrucci, Clifton James McFate, Aditya Kalyanpur, Andrea Bradshaw, David Melville
  • Publication number: 20230297398
    Abstract: A research assistant system may include a research tool and components and a user interface to discover and evidence answers to complex research questions. The research tools may include components to iteratively perform steps in a research process, including searching, analyzing, connecting, aggregating, synthesizing, and chaining together evidence from a diverse set of knowledge sources. The system may receive an input query and perform a semantic search for key concepts in a text corpus. A semantic parser may interpret the search results. The system may aggregate and synthesize information from interpreted results. The system may rank and score the aggregated results data and present data on the user interface. The user interface may include prompts to iteratively guide user input to explore evidentiary chains and connect research concepts to produce research results annotated by evidence passages.
    Type: Application
    Filed: January 21, 2022
    Publication date: September 21, 2023
    Inventors: David A. Ferrucci, Aditya A. Kalyanpur, Shirin Saleem, Kailash Karthik Saravanakumar, Jose Barrera, Gregory H. Burnham
  • Patent number: 11720611
    Abstract: Generating textual entailment pair by a natural language processing (NLP) system. The NLP system receives two input texts, such as a question and a candidate answer. The NLP system queries a database and retrieves passages likely to include text that support the candidate answer. The NLP system generates parse trees and performs term matching on the passages and scores them according to the matching. The NLP system detects anchor pairs in the question and in the passage and aligns subgraphs (within the parse trees) of one to the other based on matching. The NLP system identifies aligned terms in the question and the passage that are not in the aligned subgraphs. The NLP system identifies text fragments, for the question and the passage, within the non-aligned segments of their respective parse trees, that connect the aligned term to the aligned portion of the subgraph.
    Type: Grant
    Filed: May 20, 2016
    Date of Patent: August 8, 2023
    Assignee: INTERNATIONAL BUSINESS MACHINES CORPORATION
    Inventors: Branimir K. Boguraev, Jennifer Chu-Carroll, Aditya A. Kalyanpur, David J. McClosky, James W. Murdock, IV, Siddharth A. Patwardhan
  • Publication number: 20230236857
    Abstract: A research assistant system may include a research tool and components and a user interface to discover and evidence answers to complex research questions. The research tools may include components to iteratively perform steps in a research process, including searching, analyzing, connecting, aggregating, synthesizing, and chaining together evidence from a diverse set of knowledge sources. The system may receive an input query and perform a semantic search for key concepts in a text corpus. A semantic parser may interpret the search results. The system may aggregate and synthesize information from interpreted results. The system may rank and score the aggregated results data and present data on the user interface. The user interface may include prompts to iteratively guide user input to explore evidentiary chains and connect research concepts to produce research results annotated by evidence passages.
    Type: Application
    Filed: January 21, 2022
    Publication date: July 27, 2023
    Inventors: David A. Ferrucci, Aditya A. Kalyanpur, Shirin Saleem, Jose Barrera, Gregory H. Burnham, Kailash Karthik Saravanakumar
  • Publication number: 20230237271
    Abstract: A research assistant system may include a research tool and components and a user interface to discover and evidence answers to complex research questions. The research tools may include components to iteratively perform steps in a research process, including searching, analyzing, connecting, aggregating, synthesizing, and chaining together evidence from a diverse set of knowledge sources. The system may receive an input query and perform a semantic search for key concepts in a text corpus. A semantic parser may interpret the search results. The system may aggregate and synthesize information from interpreted results. The system may rank and score the aggregated results data and present data on the user interface. The user interface may include prompts to iteratively guide user input to explore evidentiary chains and connect research concepts to produce research results annotated by evidence passages.
    Type: Application
    Filed: January 21, 2022
    Publication date: July 27, 2023
    Inventors: David A. Ferrucci, Shirin Saleem, Aditya A. Kalyanpur
  • Patent number: 11531559
    Abstract: A research assistant system may include a research tool and components and a user interface to discover and evidence answers to complex research questions. The research tools may include components to iteratively perform steps in a research process, including searching, analyzing, connecting, aggregating, synthesizing, and chaining together evidence from a diverse set of knowledge sources. The system may receive an input query and perform a semantic search for key concepts in a text corpus. A semantic parser may interpret the search results. The system may aggregate and synthesize information from interpreted results. The system may rank and score the aggregated results data and present data on the user interface. The user interface may include prompts to iteratively guide user input to explore evidentiary chains and connect research concepts to produce research results annotated by evidence passages.
    Type: Grant
    Filed: January 21, 2022
    Date of Patent: December 20, 2022
    Assignee: Elemental Cognition Inc.
    Inventors: David A. Ferrucci, Aditya A. Kalyanpur, Shirin Saleem, Jose Barrera
  • Patent number: 11520813
    Abstract: Generating textual entailment pair by a natural language processing (NLP) system. The NLP system receives two input texts, such as a question and a candidate answer. The NLP system queries a database and retrieves passages likely to include text that support the candidate answer. The NLP system generates parse trees and performs term matching on the passages and scores them according to the matching. The NLP system detects anchor pairs in the question and in the passage and aligns subgraphs (within the parse trees) of one to the other based on matching. The NLP system identifies aligned terms in the question and the passage that are not in the aligned subgraphs. The NLP system identifies text fragments, for the question and the passage, within the non-aligned segments of their respective parse trees, that connect the aligned term to the aligned portion of the subgraph.
    Type: Grant
    Filed: January 4, 2016
    Date of Patent: December 6, 2022
    Assignee: International Business Machines Corporation
    Inventors: Branimir K. Boguraev, Jennifer Chu-Carroll, Aditya A. Kalyanpur, David J. McClosky, James W. Murdock, IV, Siddharth A. Patwardhan
  • Publication number: 20220261817
    Abstract: A collaborative user support system may include support components and a user portal to interact with a user and generate solutions to user problems. The support components may include a natural language understanding (NLU) engine, a reasoning engine, a semantic search engine, a multimodal dialog engine, and an active learning engine. The user portal may receive input dialog and the NLU engine may translate the dialog into machine language. The reasoning engine may determine whether the dialog includes a problem and call the semantic search engine to identify a potential solution. The multimodal dialog engine may determine a visual representation of a problem and/or solution. The active learning engine may receive user feedback on generated solutions for continuous improvements to the system.
    Type: Application
    Filed: February 17, 2022
    Publication date: August 18, 2022
    Inventors: David A. Ferrucci, Gregory H. Burnham, Aditya A. Kalyanpur, David Nachman
  • Publication number: 20220067540
    Abstract: A dynamic reasoning system may include a symbolic reasoning engine that iteratively calls a dynamic rule generator to answer an input query. The symbolic reasoning engine may determine a primary goal and/or secondary goals to generate proofs for the answer. The symbolic reasoning engine may call a rules component to provide rules to prove a current input goal. The rules component may use a static rule knowledge base and/or the dynamic rule generator to retrieve and rank rules relevant to the current input goal. The dynamic rule generator may generate new rules that lead to the current input goal. The dynamic rule generator may include a statistical model that generates unstructured or structured probabilistic rules based on context related to the input query. The symbolic reasoning engine may return a list of rules with confidence for explaining the answer to the input goal.
    Type: Application
    Filed: September 1, 2020
    Publication date: March 3, 2022
    Applicant: Elemental OpCo, LLC
    Inventors: David Ferrucci, Aditya Kalyanpur, Jennifer Chu-Carroll, Thomas Breloff, Or Biran, David Buchanan
  • Patent number: 11048737
    Abstract: According to an aspect, concept identification in a question answering system includes receiving, at a computer processor, a text span as a subject of a search query. An aspect also includes searching a title-oriented document (TOD) corpus for the text span, and matching, by the computer processor, concepts in title-oriented documents TODs of the TOD corpus to the span of text. The matching of the concepts includes decomposing the title-oriented documents into a series of passages, scoring the passages identified as possible matches, and merging and ranking results of the scoring to produce final scores for each concept associated with the title-oriented documents.
    Type: Grant
    Filed: November 16, 2015
    Date of Patent: June 29, 2021
    Assignee: INTERNATIONAL BUSINESS MACHINES CORPORATION
    Inventors: Aditya A. Kalyanpur, James W. Murdock, IV
  • Patent number: 10657205
    Abstract: An architecture and processes enable computer learning and developing an understanding of arbitrary natural language text through collaboration with humans in the context of joint problem solving. The architecture ingests the text and then syntactically and semantically processes the text to infer an initial understanding of the text. The initial understanding is captured in a story model of semantic and frame structures. The story model is then tested through computer generated questions that are posed to humans through interactive dialog sessions. The knowledge gleaned from the humans is used to update the story model as well as the computing system's current world model of understanding. The process is repeated for multiple stories over time, enabling the computing system to grow in knowledge and thereby understand stories of increasingly higher reading comprehension levels.
    Type: Grant
    Filed: March 20, 2017
    Date of Patent: May 19, 2020
    Assignee: ELEMENTAL COGNITION LLC
    Inventors: David Ferrucci, Mike Barborak, David Buchanan, Greg Burnham, Jennifer Chu-Carroll, Aditya Kalyanpur, Adam Lally, Stefano Pacifico, Chang Wang
  • Patent number: 10650099
    Abstract: An architecture and processes enable computer learning and developing an understanding of arbitrary natural language text through collaboration with humans in the context of joint problem solving. The architecture ingests the text and then syntactically and semantically processes the text to infer an initial understanding of the text. The initial understanding is captured in a story model of semantic and frame structures. The story model is then tested through computer generated questions that are posed to humans through interactive dialog sessions. The knowledge gleaned from the humans is used to update the story model as well as the computing system's current world model of understanding. The process is repeated for multiple stories over time, enabling the computing system to grow in knowledge and thereby understand stories of increasingly higher reading comprehension levels.
    Type: Grant
    Filed: March 20, 2017
    Date of Patent: May 12, 2020
    Assignee: ELMENTAL COGNITION LLC
    Inventors: David Ferrucci, Mike Barborak, David Buchanan, Greg Burnham, Jennifer Chu-Carroll, Aditya Kalyanpur, Adam Lally, Stefano Pacifico, Chang Wang
  • Patent number: 10628523
    Abstract: An architecture and processes enable computer learning and developing an understanding of arbitrary natural language text through collaboration with humans in the context of joint problem solving. The architecture ingests the text and then syntactically and semantically processes the text to infer an initial understanding of the text. The initial understanding is captured in a story model of semantic and frame structures. The story model is then tested through computer generated questions that are posed to humans through interactive dialog sessions. The knowledge gleaned from the humans is used to update the story model as well as the computing system's current world model of understanding. The process is repeated for multiple stories over time, enabling the computing system to grow in knowledge and thereby understand stories of increasingly higher reading comprehension levels.
    Type: Grant
    Filed: March 20, 2017
    Date of Patent: April 21, 2020
    Assignee: ELEMENTAL COGNITION LLC
    Inventors: David Ferrucci, Mike Barborak, David Buchanan, Greg Burnham, Jennifer Chu-Carroll, Aditya Kalyanpur, Adam Lally, Stefano Pacifico, Chang Wang
  • Patent number: 10621285
    Abstract: An architecture and processes enable computer learning and developing an understanding of arbitrary natural language text through collaboration with humans in the context of joint problem solving. The architecture ingests the text and then syntactically and semantically processes the text to infer an initial understanding of the text. The initial understanding is captured in a story model of semantic and frame structures. The story model is then tested through computer generated questions that are posed to humans through interactive dialog sessions. The knowledge gleaned from the humans is used to update the story model as well as the computing system's current world model of understanding. The process is repeated for multiple stories over time, enabling the computing system to grow in knowledge and thereby understand stories of increasingly higher reading comprehension levels.
    Type: Grant
    Filed: March 20, 2017
    Date of Patent: April 14, 2020
    Assignee: ELEMENTAL COGNITION LLC
    Inventors: David Ferrucci, Mike Barborak, David Buchanan, Greg Burnham, Jennifer Chu-Carroll, Aditya Kalyanpur, Adam Lally, Stefano Pacifico, Chang Wang
  • Patent number: 10621880
    Abstract: A method of generating secondary questions in a question-answer system. Missing information is identified from a corpus of data using a computerized device. The missing information comprises any information that improves confidence scores for candidate answers to a question. The computerized device automatically generates a plurality of hypotheses concerning the missing information. The computerized device automatically generates at least one secondary question based on each of the plurality of hypotheses. The hypotheses are ranked based on relative utility to determine an order in which the computerized device outputs the at least one secondary question to external sources to obtain responses.
    Type: Grant
    Filed: September 11, 2012
    Date of Patent: April 14, 2020
    Assignee: International Business Machines Corporation
    Inventors: Branimir K. Boguraev, David W. Buchanan, Jennifer Chu-Carroll, David A. Ferrucci, Aditya A. Kalyanpur, James W. Murdock, IV, Siddharth A. Patwardhan