Patents by Inventor Jennifer Lee Hargrove

Jennifer Lee Hargrove 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: 10929193
    Abstract: Exemplary embodiments relate to systems for building a model of changes to data items when information the data items is limited or not directly observed. Exemplary embodiments allow properties of the data items to be inferred using a single data structure and creates a highly granular log of changes to the data item. Using this data structure, the time-varying nature of changes to the data item can be determined. The data structure may be used to identify characteristics associated with a regularly-performed action, to examine how adherence to the action affects a system, and to identify outcomes of non-adherence. Fungible data items may be mapped to a remediable condition or remedy class. This may be accomplished by automatically deriving conditions and remedial information from available information, matching the conditions to remedial classes or types via a customizable mapping, and then calculating adherence for the condition on the available information.
    Type: Grant
    Filed: August 5, 2019
    Date of Patent: February 23, 2021
    Assignee: SAS INSTITUTE INC.
    Inventors: Ruth Ellen Baldasaro, Jennifer Lee Hargrove, Edward Lew Rowe, Emily Louise Chapman-McQuiston
  • Patent number: 10761894
    Abstract: Exemplary embodiments relate to systems for building a model of changes to data items when information the data items is limited or not directly observed. Exemplary embodiments allow properties of the data items to be inferred using a single data structure and creates a highly granular log of changes to the data item. Using this data structure, the time-varying nature of changes to the data item can be determined. The data structure may be used to identify characteristics associated with a regularly-performed action, to examine how adherence to the action affects a system, and to identify outcomes of non-adherence. Fungible data items may be mapped to a remediable condition or remedy class. This may be accomplished by automatically deriving conditions and remedial information from available information, matching the conditions to remedial classes or types via a customizable mapping, and then calculating adherence for the condition on the available information.
    Type: Grant
    Filed: October 31, 2018
    Date of Patent: September 1, 2020
    Assignee: SAS INSTITUTE INC.
    Inventors: Ruth Ellen Baldasaro, Jennifer Lee Hargrove, Edward Lew Rowe, Emily Louise Chapman-McQuiston
  • Publication number: 20190354410
    Abstract: Exemplary embodiments relate to systems for building a model of changes to data items when information the data items is limited or not directly observed. Exemplary embodiments allow properties of the data items to be inferred using a single data structure and creates a highly granular log of changes to the data item. Using this data structure, the time-varying nature of changes to the data item can be determined. The data structure may be used to identify characteristics associated with a regularly-performed action, to examine how adherence to the action affects a system, and to identify outcomes of non-adherence. Fungible data items may be mapped to a remediable condition or remedy class. This may be accomplished by automatically deriving conditions and remedial information from available information, matching the conditions to remedial classes or types via a customizable mapping, and then calculating adherence for the condition on the available information.
    Type: Application
    Filed: August 5, 2019
    Publication date: November 21, 2019
    Applicant: SAS Institute Inc.
    Inventors: Ruth Ellen Baldasaro, Jennifer Lee Hargrove, Edward Lew Rowe, Emily Louise Chapman-McQuiston
  • Publication number: 20190310891
    Abstract: Exemplary embodiments relate to systems for building a model of changes to data items when information the data items is limited or not directly observed. Exemplary embodiments allow properties of the data items to be inferred using a single data structure and creates a highly granular log of changes to the data item. Using this data structure, the time-varying nature of changes to the data item can be determined. The data structure may be used to identify characteristics associated with a regularly-performed action, to examine how adherence to the action affects a system, and to identify outcomes of non-adherence. Fungible data items may be mapped to a remediable condition or remedy class. This may be accomplished by automatically deriving conditions and remedial information from available information, matching the conditions to remedial classes or types via a customizable mapping, and then calculating adherence for the condition on the available information.
    Type: Application
    Filed: October 31, 2018
    Publication date: October 10, 2019
    Applicant: SAS Institute Inc.
    Inventors: Ruth Ellen Baldasaro, Jennifer Lee Hargrove, Edward Lew Rowe, Emily Louise Chapman-McQuiston