Patents by Inventor Asa Ben-Hur

Asa Ben-Hur 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: 20140032451
    Abstract: Support vector machines are used to classify data contained within a structured dataset such as a plurality of signals generated by a spectral analyzer. The signals are pre-processed to ensure alignment of peaks across the spectra. Similarity measures are constructed to provide a basis for comparison of pairs of samples of the signal. A support vector machine is trained to discriminate between different classes of the samples. to identify the most predictive features within the spectra. In a preferred embodiment feature selection is performed to reduce the number of features that must be considered.
    Type: Application
    Filed: June 10, 2013
    Publication date: January 30, 2014
    Inventors: Asa Ben-Hur, Andre Elisseeff, Olivier Chappelle, Jason Weston
  • Publication number: 20130297607
    Abstract: A method is provided for unsupervised clustering of data to identify pattern similarities. A clustering algorithm randomly divides the data into k different subsets and measures the similarity between pairs of datapoints within the subsets, assigning a score to the pairs based on similarity, with the greatest similarity giving the highest correlation score. A distribution of the scores is plotted for each k. The highest value of k that has a distribution that remains concentrated near the highest correlation score corresponds to the number of classes having pattern similarities.
    Type: Application
    Filed: July 2, 2013
    Publication date: November 7, 2013
    Inventors: Asa Ben-Hur, Andre Elisseeff, Isabelle Guyon
  • Patent number: 8489531
    Abstract: A method is provided for unsupervised clustering of gene expression data to identify co-regulation patterns. A clustering algorithm randomly divides the data into k different subsets and measures the similarity between pairs of datapoints within the subsets, assigning a score to the pairs based on similarity, with the greatest similarity giving the highest correlation score. A distribution of the scores is plotted for each k. The highest value of k that has a distribution that remains concentrated near the highest correlation score corresponds to the number of co-regulation patterns.
    Type: Grant
    Filed: February 2, 2011
    Date of Patent: July 16, 2013
    Assignee: Health Discovery Corporation
    Inventors: Asa Ben Hur, Andre Elisseeff, Isabelle Guyon
  • Patent number: 8463718
    Abstract: Support vector machines are used to classify data contained within a structured dataset such as a plurality of signals generated by a spectral analyzer. The signals are pre-processed to ensure alignment of peaks across the spectra. Similarity measures are constructed to provide a basis for comparison of pairs of samples of the signal. A support vector machine is trained to discriminate between different classes of the samples. to identify the most predictive features within the spectra. In a preferred embodiment feature selection is performed to reduce the number of features that must be considered.
    Type: Grant
    Filed: February 4, 2010
    Date of Patent: June 11, 2013
    Assignee: Health Discovery Corporation
    Inventors: Asa Ben-Hur, Andre Elisseeff, Olivier Chapelle, Jason Aaron Edward Weston
  • Publication number: 20110125683
    Abstract: A method is provided for unsupervised clustering of gene expression data to identify co-regulation patterns. A clustering algorithm randomly divides the data into k different subsets and measures the similarity between pairs of datapoints within the subsets, assigning a score to the pairs based on similarity, with the greatest similarity giving the highest correlation score. A distribution of the scores is plotted for each k. The highest value of k that has a distribution that remains concentrated near the highest correlation score corresponds to the number of co-regulation patterns.
    Type: Application
    Filed: February 2, 2011
    Publication date: May 26, 2011
    Applicant: HEALTH DISCOVERY CORPORATION
    Inventors: Asa Ben Hur, André Elisseeff, Isabelle Guyon
  • Patent number: 7890445
    Abstract: A model selection method is provided for choosing the number of clusters, or more generally the parameters of a clustering algorithm. The algorithm is based on comparing the similarity between pairs of clustering runs on sub-samples or other perturbations of the data. High pairwise similarities show that the clustering represents a stable pattern in the data. The method is applicable to any clustering algorithm, and can also detect lack of structure. We show results on artificial and real data using a hierarchical clustering algorithm.
    Type: Grant
    Filed: October 30, 2007
    Date of Patent: February 15, 2011
    Assignee: Health Discovery Corporation
    Inventors: Asa Ben Hur, André Elisseeff, Isabelle Guyon
  • Publication number: 20100205124
    Abstract: Support vector machines are used to classify data contained within a structured dataset such as a plurality of signals generated by a spectral analyzer. The signals are pre-processed to ensure alignment of peaks across the spectra. Similarity measures are constructed to provide a basis for comparison of pairs of samples of the signal. A support vector machine is trained to discriminate between different classes of the samples. to identify the most predictive features within the spectra. In a preferred embodiment feature selection is performed to reduce the number of features that must be considered.
    Type: Application
    Filed: February 4, 2010
    Publication date: August 12, 2010
    Applicant: HEALTH DISCOVERY CORPORATION
    Inventors: Asa Ben-Hur, Andre Elisseeff, Olivier Chapelle, Jason Aaron Edward Weston
  • Patent number: 7676442
    Abstract: Support vector machines are used to classify data contained within a structured dataset such as a plurality of signals generated by a spectral analyzer. The signals are pre-processed to ensure alignment of peaks across the spectra. Similarity measures are constructed to provide a basis for comparison of pairs of samples of the signal. A support vector machine is trained to discriminate between different classes of the samples. to identify the most predictive features within the spectra. In a preferred embodiment feature selection is performed to reduce the number of features that must be considered.
    Type: Grant
    Filed: October 30, 2007
    Date of Patent: March 9, 2010
    Assignee: Health Discovery Corporation
    Inventors: Asa Ben-Hur, André Elisseeff, Olivier Chapelle, Jason Aaron Edward Weston
  • Patent number: 7617163
    Abstract: Support vector machines are used to classify data contained within a structured dataset such as a plurality of signals generated by a spectral analyzer. The signals are pre-processed to ensure alignment of peaks across the spectra. Similarity measures are constructed to provide a basis for comparison of pairs of samples of the signal. A support vector machine is trained to discriminate between different classes of the samples. to identify the most predictive features within the spectra. In a preferred embodiment feature selection is performed to reduce the number of features that must be considered.
    Type: Grant
    Filed: October 9, 2002
    Date of Patent: November 10, 2009
    Assignee: Health Discovery Corporation
    Inventors: Asa Ben-Hur, André Elisseeff, Olivier Chapelle, Jason Aaron Edward Weston
  • Publication number: 20080140592
    Abstract: A model selection method is provided for choosing the number of clusters, or more generally the parameters of a clustering algorithm. The algorithm is based on comparing the similarity between pairs of clustering runs on sub-samples or other perturbations of the data. High pairwise similarities show that the clustering represents a stable pattern in the data. The method is applicable to any clustering algorithm, and can also detect lack of structure. We show results on artificial and real data using a hierarchical clustering algorithm.
    Type: Application
    Filed: October 30, 2007
    Publication date: June 12, 2008
    Inventors: Asa Ben-Hur, Andre Elisseeff, Isabelle Guyon
  • Publication number: 20080097940
    Abstract: Support vector machines are used to classify data contained within a structured dataset such as a plurality of signals generated by a spectral analyzer. The signals are pre-processed to ensure alignment of peaks across the spectra. Similarity measures are constructed to provide a basis for comparison of pairs of samples of the signal. A support vector machine is trained to discriminate between different classes of the samples. to identify the most predictive features within the spectra. In a preferred embodiment feature selection is performed to reduce the number of features that must be considered.
    Type: Application
    Filed: October 30, 2007
    Publication date: April 24, 2008
    Inventors: Asa Ben-Hur, Andre Elisseeff, Olivier Chapelle, Jason Weston
  • Publication number: 20050071140
    Abstract: A model selection method is provided for choosing the number of clusters, or more generally the parameters of a clustering algorithm. The algorithm is based on comparing the similarity between pairs of clustering runs on sub-samples or other perturbations of the data. High pairwise similarities show that the clustering represents a stable pattern in the data. The method is applicable to any clustering algorithm, and can also detect lack of structure. We show results on artificial and real data using a hierarchical clustering algorithm.
    Type: Application
    Filed: May 17, 2002
    Publication date: March 31, 2005
    Inventors: Asa Ben-Hur, Andre Elisseeff, Isabelle Guyon