Patents by Inventor Matthew Holbrook

Matthew Holbrook 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: 20240104796
    Abstract: System and methods for determining and implementing optimized reconstruction parameters for computer-aided diagnosis applications. A simulator generates image data using different combinations of reconstruction parameters. The image data is used to evaluate or train machine learned networks that are configured for computer-aided diagnosis applications to determine which reconstruction parameters are optimal for application or training.
    Type: Application
    Filed: September 27, 2022
    Publication date: March 28, 2024
    Inventors: Matthew Holbrook, Mehmet Akif Gulsun, Mariappan S. Nadar, Puneet Sharma, Boris Mailhe
  • Patent number: 11900254
    Abstract: A method of generating a multi-modal prediction is disclosed herein. A computing system retrieves event data from a data store. The event data includes information for a plurality of events across a plurality of seasons. Computing system generates a predictive model using a mixture density network, by generating an input vector from the event data learning, by the mixture density network, a plurality of values associated with a next play following each play in the event data. The mixture density network is trained to output the plurality of values near simultaneously. Computing system receives a set of event data directed to an event in a match. The set of event data includes information directed to at least playing surface position and current score. Computing system generates, via the predictive model, a plurality of values associated with a next event following the event based on the set of event data.
    Type: Grant
    Filed: February 27, 2023
    Date of Patent: February 13, 2024
    Assignee: STATS LLC
    Inventors: Matthew Holbrook, Jennifer Hobbs, Patrick Joseph Lucey
  • Publication number: 20230222340
    Abstract: A method of generating a multi-modal prediction is disclosed herein. A computing system retrieves event data from a data store. The event data includes information for a plurality of events across a plurality of seasons. Computing system generates a predictive model using a mixture density network, by generating an input vector from the event data learning, by the mixture density network, a plurality of values associated with a next play following each play in the event data. The mixture density network is trained to output the plurality of values near simultaneously. Computing system receives a set of event data directed to an event in a match. The set of event data includes information directed to at least playing surface position and current score. Computing system generates, via the predictive model, a plurality of values associated with a next event following the event based on the set of event data.
    Type: Application
    Filed: February 27, 2023
    Publication date: July 13, 2023
    Applicant: STATS LLC
    Inventors: Matthew Holbrook, Jennifer Hobbs, Patrick Joseph Lucey
  • Patent number: 11593647
    Abstract: A method of generating a multi-modal prediction is disclosed herein. A computing system retrieves event data from a data store. The event data includes information for a plurality of events across a plurality of seasons. Computing system generates a predictive model using a mixture density network, by generating an input vector from the event data learning, by the mixture density network, a plurality of values associated with a next play following each play in the event data. The mixture density network is trained to output the plurality of values near simultaneously. Computing system receives a set of event data directed to an event in a match. The set of event data includes information directed to at least playing surface position and current score. Computing system generates, via the predictive model, a plurality of values associated with a next event following the event based on the set of event data.
    Type: Grant
    Filed: February 28, 2020
    Date of Patent: February 28, 2023
    Assignee: STATS LLC
    Inventors: Matthew Holbrook, Jennifer Hobbs, Patrick Joseph Lucey
  • Publication number: 20210322825
    Abstract: A system and method for predicting next pitch are disclosed herein. A computing system retrieves pitch-by-pitch information for a plurality of events and game context information associated with each pitch in the pitch-by-pitch information. The computing system converts the pitch-by-pitch information and the game context information into a plurality of graph-based representation. A graph neural network learns to generate a pitch type prediction for each pitch based on the plurality of graph-based representations. The computing system generates a trained graph neural network based on the learning. The computing system receives a current graph-based representation of current pitch-by-pitch information for a current pitcher and current game context information. The computing system predicts, via the trained graph neural network, a pitch type for the next pitch to be delivered from the current pitcher.
    Type: Application
    Filed: April 9, 2021
    Publication date: October 21, 2021
    Applicant: STATS LLC
    Inventors: Daniel Edison Marley, Matthew Thomas O'Connor, Alexander Nicholas Ottenwess, Aiman Sherani, Matthew Holbrook
  • Publication number: 20200279160
    Abstract: A method of generating a multi-modal prediction is disclosed herein. A computing system retrieves event data from a data store. The event data includes information for a plurality of events across a plurality of seasons. Computing system generates a predictive model using a mixture density network, by generating an input vector from the event data learning, by the mixture density network, a plurality of values associated with a next play following each play in the event data. The mixture density network is trained to output the plurality of values near simultaneously. Computing system receives a set of event data directed to an event in a match. The set of event data includes information directed to at least playing surface position and current score. Computing system generates, via the predictive model, a plurality of values associated with a next event following the event based on the set of event data.
    Type: Application
    Filed: February 28, 2020
    Publication date: September 3, 2020
    Applicant: STATS LLC
    Inventors: Matthew Holbrook, Jennifer Hobbs, Patrick Joseph Lucey