Patents by Inventor Greg J. GASPERECZ

Greg J. GASPERECZ 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).

  • Publication number: 20230419110
    Abstract: A computer-implemented method for generating regulatory content requirement descriptions is disclosed and involves receiving requirement data including a plurality of requirements including hierarchical information extracted from regulatory content. The method involves identifying parent requirements based on the existence of child requirements on a lower hierarchical level and generating requirement pairs including the parent requirement and at least one child requirement. The method also involves feeding each of the pairs through a conjunction classifier which has been trained to generate a classification output indicative of the pair being not a conjunction (NC), a single requirement conjunction (CSR), or a multiple requirement conjunction (CMR). The method involves generating a set of requirement descriptions based on the classification output generated for each parent requirement.
    Type: Application
    Filed: November 8, 2021
    Publication date: December 28, 2023
    Inventors: Mahdi Ramezani, Elijah Solomon Krag, Donya Hamzeian, Greg J. Gasperecz, Margery Moore
  • Patent number: 11763321
    Abstract: Described herein are systems and methods for extracting requirements from regulatory content data. The method including: receiving the regulatory content data; classifying an associated type for each citation in the regulatory content data using a trained classifier machine learning model, the classifier machine learning model trained using regulatory content data including expert labelled annotations; splitting citations in the regulatory content data, including determining whether each citation includes more than one requirement; merging one or more citations in the regulatory content data, including identifying child-parent relationships for the citations and merging citations based on conjunctive language; and outputting the citations and their associated type. In a particular case, the types of citations for classification include one of a requirement (REQ), an optional or site-specific requirement (OSR), a description (DSC), and part of another requirement.
    Type: Grant
    Filed: September 6, 2019
    Date of Patent: September 19, 2023
    Assignee: MOORE AND GASPERECZ GLOBAL, INC.
    Inventors: Greg J. Gasperecz, Margery A. Moore, Yaser Khalighi, Gilda Majidi, Amir Hossein Najian
  • Patent number: 11314922
    Abstract: A computer-implemented method for generating regulatory content requirement descriptions is disclosed and involves receiving requirement data including a plurality of requirements including hierarchical information extracted from regulatory content. The method involves identifying parent requirements based on the existence of child requirements on a lower hierarchical level and generating requirement pairs including the parent requirement and at least one child requirement. The method also involves feeding each of the pairs through a conjunction classifier which has been trained to generate a classification output indicative of the pair being not a conjunction (NC), a single requirement conjunction (CSR), or a multiple requirement conjunction (CMR). The method involves generating a set of requirement descriptions based on the classification output generated for each parent requirement.
    Type: Grant
    Filed: October 26, 2021
    Date of Patent: April 26, 2022
    Assignee: MOORE & GASPERECZ GLOBAL INC.
    Inventors: Mahdi Ramezani, Elijah Solomon Krag, Donya Hamzeian, Greg J. Gasperecz, Margery Moore
  • Publication number: 20200279271
    Abstract: Described herein are systems and methods for extracting requirements from regulatory content data. The method including: receiving the regulatory content data; classifying an associated type for each citation in the regulatory content data using a trained classifier machine learning model, the classifier machine learning model trained using regulatory content data including expert labelled annotations; splitting citations in the regulatory content data, including determining whether each citation includes more than one requirement; merging one or more citations in the regulatory content data, including identifying child-parent relationships for the citations and merging citations based on conjunctive language; and outputting the citations and their associated type. In a particular case, the types of citations for classification include one of a requirement (REQ), an optional or site-specific requirement (OSR), a description (DSC), and part of another requirement.
    Type: Application
    Filed: September 6, 2019
    Publication date: September 3, 2020
    Inventors: Greg J. GASPERECZ, Margery A. MOORE, Yaser KHALIGHI, Gilda MAJIDI, Amir HOSSEIN NAJIAN