Patents by Inventor Matt Rosauer

Matt Rosauer 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: 20120072247
    Abstract: A system including a general-purpose decision support and decision making predictive analytics engine that is able to find patterns in many types of digitally represented data. Given data that represents a random collection of points, the system finds these internal patterns employing an inductive principle called structural risk minimization that separates the points with the maximum margin. Internal patterns in the initial data are inductively determined by employing structural risk minimization to separate the points with a maximum margin. A model based on the internal patterns in the data is then generated, and the model is used with new data to generate predictions by evaluating the new data for similarities to the model. The model is implemented to facilitate decision making processes. Special features are provided to validate incoming data, preprocess the data, and monitor the data to improve the integrity of modeling results.
    Type: Application
    Filed: November 28, 2011
    Publication date: March 22, 2012
    Inventors: Matt Rosauer, Richard Vlasimsky
  • Publication number: 20110066454
    Abstract: A system including a general-purpose decision support and decision making predictive analytics engine that is able to find patterns in many types of digitally represented data. Given data that represents a random collection of points, the system finds these internal patterns employing an inductive principle called structural risk minimization that separates the points with the maximum margin. Internal patterns in the initial data are inductively determined by employing structural risk minimization to separate the points with a maximum margin. A model based on the internal patterns in the data is then generated, and the model is used with new data to generate predictions by evaluating the new data for similarities to the model. The model is implemented to facilitate decision making processes. Special features are provided to validate incoming data, preprocess the data, and monitor the data to improve the integrity of modeling results.
    Type: Application
    Filed: November 19, 2010
    Publication date: March 17, 2011
    Inventors: Matt Rosauer, Richard Vlasimsky
  • Publication number: 20070016542
    Abstract: A system including a general-purpose decision support and decision making predictive analytics engine that is able to find patterns in many types of digitally represented data. Given data that represents a random collection of points, the system finds these internal patterns employing an inductive principle called structural risk minimization that separates the points with the maximum margin. Internal patterns in the initial data are inductively determined by employing structural risk minimization to separate the points with a maximum margin. A model based on the internal patterns in the data is then generated, and the model is used with new data to generate predictions by evaluating the new data for similarities to the model. The model is implemented to facilitate decision making processes. Special features are provided to validate incoming data, preprocess the data, and monitor the data to improve the integrity of modeling results.
    Type: Application
    Filed: July 1, 2006
    Publication date: January 18, 2007
    Inventors: Matt Rosauer, Richard Vlasimsky