Patents by Inventor Megan McCoskey

Megan McCoskey 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: 11888600
    Abstract: An advocacy system uses trained machine learning models to create messages that are sent to advocates or policymakers to achieve desired outcomes for an organization. Desired outcomes can include, for example: an advocate sending a message to a policymaker or legislative representative advocating in favor or the organization's position on an issue; a policymaker acting or voting in favor of the organization's position on an issue; or an advocate making a financial contribution to the organization. The machine learning models can be configured to select possible message characteristics or features that the system will include/use in creating/sending messages to/for individual senders and recipients. The machine learning models can be trained based on message characteristics, personal profile characteristics of senders/recipients, and outcomes from previously sent messages.
    Type: Grant
    Filed: September 20, 2022
    Date of Patent: January 30, 2024
    Inventors: Vladimir Eidelman, Daniel Argyle, Paul Matthew Ellender, Jr., Megan McCoskey
  • Patent number: 11711324
    Abstract: An advocacy system uses trained machine learning models to create messages that are sent to advocates or policymakers to achieve desired outcomes for an organization. Desired outcomes can include, for example: an advocate sending a message to a policymaker or legislative representative advocating in favor or the organization's position on an issue; a policymaker acting or voting in favor of the organization's position on an issue; or an advocate making a financial contribution to the organization. The machine learning models can be configured to select possible message characteristics or features that the system will include/use in creating/sending messages to/for individual senders and recipients. The machine learning models can be trained based on message characteristics, personal profile characteristics of senders/recipients, and outcomes from previously sent messages.
    Type: Grant
    Filed: September 20, 2022
    Date of Patent: July 25, 2023
    Inventors: Vladimir Eidelman, Daniel Argyle, Paul Matthew Eilender, Jr., Megan McCoskey
  • Publication number: 20230124041
    Abstract: An advocacy system uses trained machine learning models to create messages that are sent to advocates or policymakers to achieve desired outcomes for an organization. Desired outcomes can include, for example: an advocate sending a message to a policymaker or legislative representative advocating in favor or the organization's position on an issue; a policymaker acting or voting in favor of the organization's position on an issue; or an advocate making a financial contribution to the organization. The machine learning models can be configured to select possible message characteristics or features that the system will include/use in creating/sending messages to/for individual senders and recipients. The machine learning models can be trained based on message characteristics, personal profile characteristics of senders/recipients, and outcomes from previously sent messages.
    Type: Application
    Filed: September 20, 2022
    Publication date: April 20, 2023
    Inventors: Vladimir Eidelman, Daniel Argyle, Paul Matthew Ellender, JR., Megan McCoskey
  • Publication number: 20230124697
    Abstract: An advocacy system uses trained machine learning models to create messages that are sent to advocates or policymakers to achieve desired outcomes for an organization. Desired outcomes can include, for example: an advocate sending a message to a policymaker or legislative representative advocating in favor or the organization’s position on an issue; a policymaker acting or voting in favor of the organization’s position on an issue; or an advocate making a financial contribution to the organization. The machine learning models can be configured to select possible message characteristics or features that the system will include/use in creating/sending messages to/for individual senders and recipients. The machine learning models can be trained based on message characteristics, personal profile characteristics of senders/recipients, and outcomes from previously sent messages.
    Type: Application
    Filed: September 20, 2022
    Publication date: April 20, 2023
    Inventors: Vladimir Eidelman, Daniel Argyle, Paul Matthew Ellender, JR., Megan McCoskey