Patents by Inventor John Brocklebank

John Brocklebank 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: 20070094176
    Abstract: A computer-implemented method and system for building a neural network is disclosed. The neural network predicts at least one target based upon predictor variables defined in a state space. First, an input data set is retrieved that includes the predictor variables and at least one target associated with the predictor variables for each observation. In the state space, a number of points is inserted in the state space based upon the values of the predictor variables. The number of points is less than the number of observations. A statistical measure is determined that describes a relationship between the observations and the inserted points. Weights and activation functions of the neural network are determined using the statistical measure.
    Type: Application
    Filed: December 8, 2006
    Publication date: April 26, 2007
    Inventors: James Goodnight, Wolfgang Hartmann, John Brocklebank
  • Publication number: 20060247900
    Abstract: Computer-implemented systems and methods for analyzing time series data. Statistical techniques are performed upon candidate autoregressive components and regressor components using the time series data. Autoregressive and regressor components are included in a predictive model based upon the autoregressive and regressor components' significance levels as determined by the statistical techniques.
    Type: Application
    Filed: May 2, 2005
    Publication date: November 2, 2006
    Inventor: John Brocklebank
  • Publication number: 20060010089
    Abstract: A computer-implemented method and system for building a neural network is disclosed. The neural network predicts at least one target based upon predictor variables defined in a state space. First, an input data set is retrieved that includes the predictor variables and at least one target associated with the predictor variables for each observation. In the state space, a number of points is inserted in the state space based upon the values of the predictor variables. The number of points is less than the number of observations. A statistical measure is determined that describes a relationship between the observations and the inserted points. Weights and activation functions of the neural network are determined using the statistical measure.
    Type: Application
    Filed: September 2, 2005
    Publication date: January 12, 2006
    Inventors: James Goodnight, Wolfgang Hartmann, John Brocklebank