Patents by Inventor Peter L. Bartlett

Peter L. Bartlett 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: 20100318482
    Abstract: Learning machines, such as support vector machines, are used to analyze datasets to recognize patterns within the dataset using kernels that are selected according to the nature of the data to be analyzed. Where the datasets include an invariance transformation or noise, tangent vectors are defined to identify relationships between the invariance or noise and the training data points. A covariance matrix is formed using the tangent vectors, then used in generation of the kernel, which may be based on a kernel PCA map.
    Type: Application
    Filed: August 25, 2010
    Publication date: December 16, 2010
    Applicant: HEALTH DISCOVERY CORPORATION
    Inventors: Peter L. Bartlett, André Elisseeff, Bernhard Schoelkopf, Olivier Chapelle
  • Patent number: 7788193
    Abstract: Learning machines, such as support vector machines, are used to analyze datasets to recognize patterns within the dataset using kernels that are selected according to the nature of the data to be analyzed. Where the datasets possesses structural characteristics, locational kernels can be utilized to provide measures of similarity among data points within the dataset. The locational kernels are then combined to generate a decision function, or kernel, that can be used to analyze the dataset. Where an invariance transformation or noise is present, tangent vectors are defined to identify relationships between the invariance or noise and the data points. A covariance matrix is formed using the tangent vectors, then used in generation of the kernel.
    Type: Grant
    Filed: October 30, 2007
    Date of Patent: August 31, 2010
    Assignee: Health Discovery Corporation
    Inventors: Peter L. Bartlett, André Elisseeff, Bernhard Schoelkopf, Olivier Chapelle
  • Publication number: 20080301070
    Abstract: Learning machines, such as support vector machines, are used to analyze datasets to recognize patterns within the dataset using kernels that are selected according to the nature of the data to be analyzed. Where the datasets possesses structural characteristics, locational kernels can be utilized to provide measures of similarity among data points within the dataset. The locational kernels are then combined to generate a decision function, or kernel, that can be used to analyze the dataset. Where an invariance transformation or noise is present, tangent vectors are defined to identify relationships between the invariance or noise and the data points. A covariance matrix is formed using the tangent vectors, then used in generation of the kernel.
    Type: Application
    Filed: October 30, 2007
    Publication date: December 4, 2008
    Inventors: Peter L. Bartlett, Andre Elisseeff, Bernhard Schoelkopf, Olivier Chapelle
  • Patent number: 7353215
    Abstract: Learning machines, such as support vector machines, are used to analyze datasets to recognize patterns within the dataset using kernels that are selected according to the nature of the data to be analyzed. Where the datasets possesses structural characteristics, locational kernels can be utilized to provide measures of similarity among data points within the dataset. The locational kernels are then combined to generate a decision function, or kernel, that can be used to analyze the dataset. Where invariance transformations or noise is present, tangent vectors are defined to identify relationships between the invariance or noise and the data points. A covariance matrix is formed using the tangent vectors, then used in generation of the kernel for recognizing patterns in the dataset.
    Type: Grant
    Filed: May 7, 2002
    Date of Patent: April 1, 2008
    Assignee: Health Discovery Corporation
    Inventors: Peter L. Bartlett, André Elisseeff, Bernhard Schoelkopf