Patents by Inventor Yoh-Han Pao

Yoh-Han Pao 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).

  • Patent number: 8301576
    Abstract: A method of training a neural net includes receiving a plurality of sets of data, each set representative of a plurality of inputs to the neural net and a resulting at least one output from the neural net and calculating a plurality of network weights for the neural network based on the received plurality of sets of data. Calculating the plurality of network weights including attributing greater weight in the calculation to at least one set of the plurality of sets of data than at least one other set of the plurality of sets of data.
    Type: Grant
    Filed: October 27, 2005
    Date of Patent: October 30, 2012
    Assignee: CA, Inc.
    Inventors: Zhuo Meng, Baofu Duan, Yoh-Han Pao, Ronald J. Cass
  • Patent number: 7777743
    Abstract: A method for hierarchical visualization of multi-dimensional data is provided. A first dimension-reduction process is applied to a multi-dimensional data set to obtain a first visualization. A subset of the multi-dimensional data set associated with a selected region of the dimension-reduced first visualization is selected. A second dimension-reduction process is applied to the selected subset of the multi-dimensional data set to obtain at least one additional visualization.
    Type: Grant
    Filed: March 28, 2003
    Date of Patent: August 17, 2010
    Assignee: Computer Associates Think, Inc.
    Inventors: Yoh-Han Pao, Zhuo Meng, Baofu Duan
  • Patent number: 7716148
    Abstract: An apparatus and method for processing mixed data for a selected task is provided. An input transformation module converts mixed data into converted data. A functional mapping module processes the converted data to provide a functional output for the selected task. The selected task may be one or a combination of a variety of possible tasks, including search, recall, prediction, classification, etc. For example, the selected task may be for data mining, database search, targeted marketing, computer virus detection, etc.
    Type: Grant
    Filed: April 18, 2003
    Date of Patent: May 11, 2010
    Assignee: Computer Associates Think, Inc.
    Inventors: Zhuo Meng, Baofu Duan, Yoh-Han Pao, Ronald J Cass
  • Patent number: 7562054
    Abstract: A method for automated feature selection is provided. One or more initial sets of features are generated and evaluated to determine quality scores for the feature sets. Selected ones of the feature sets are (i) chosen according to the quality scores and modified to generate a generation of modified feature sets, (ii) the modified feature sets are evaluated to determine quality scores for the modified feature sets, and (i) and (ii) are repeated until a modified feature set is satisfactory.
    Type: Grant
    Filed: July 9, 2004
    Date of Patent: July 14, 2009
    Assignee: Computer Associates Think, Inc.
    Inventors: David E. Huddleston, Ronald J. Cass, Zhuo Meng, Yoh-Han Pao, Qian Yang, Xinyu Mao
  • Patent number: 7533006
    Abstract: An adaptive system modeling method is provided. A system model is generated by using data corresponding to an input features set selected by using a baseline significance signature of the system. A superset of the input features and other features also is selected by using the baseline significance signature. Data collected from the system corresponding to the superset is maintained online. A new significance signature of the system is periodically or intermittently determined by performing a discriminant analysis using the online superset data, and is used to detect an evolutionary change in the system.
    Type: Grant
    Filed: January 20, 2004
    Date of Patent: May 12, 2009
    Assignee: Computer Associates Think, Inc.
    Inventors: David Eugene Huddleston, Yoh-Han Pao, Ronald Cass, Qian Yang, Ella Polyak, Peter Cryer, Charles Edward Garofalo
  • Patent number: 7483868
    Abstract: Method of incrementally forming and adaptively updating a neural net model are provided. A function approximation node is incrementally added to the neural net model. Function parameters for the function approximation node are determined and function parameters of other nodes in the neural network model are updated, by using the function parameters of the other nodes prior to addition of the function approximation node to the neural network model.
    Type: Grant
    Filed: February 26, 2003
    Date of Patent: January 27, 2009
    Assignee: Computer Associates Think, Inc.
    Inventors: Zhuo Meng, Yoh-Han Pao
  • Patent number: 7444310
    Abstract: A model maintenance method is provided. If accuracy of prediction by a current model through consultation with new data is determined to be below a predetermined threshold, a compound model is formed by supplementing the current model with a local net trained with the new data.
    Type: Grant
    Filed: March 28, 2003
    Date of Patent: October 28, 2008
    Assignee: Computer Associates Think, Inc.
    Inventors: Zhuo Meng, Yoh-Han Pao, Baofu Duan
  • Patent number: 7313279
    Abstract: Methods for feature selection based on hierarchical local-region analysis of feature relationships in a data set are provided.
    Type: Grant
    Filed: July 8, 2003
    Date of Patent: December 25, 2007
    Assignee: Computer Associates Think, Inc.
    Inventors: Baofu Duan, Zhuo Meng, Yoh-Han Pao
  • Patent number: 7298906
    Abstract: A method for feature selection based on hierarchical local-region analysis of feature characteristics in a data set of mixed data type is provided. A data space associated with a mixed-type data set is partitioned into a hierarchy of plural local regions. A relationship metric (for example, a similarity correlation metric) is used to evaluate for each local region a relationship measure between input features and a target. One or more relevant features is identified, by using the relationship measure for each local region.
    Type: Grant
    Filed: February 28, 2005
    Date of Patent: November 20, 2007
    Assignee: Computer Associates Think, Inc.
    Inventors: Baofu Duan, Zhuo Meng, Yoh-Han Pao
  • Publication number: 20070112707
    Abstract: A method of training a neural net includes receiving a plurality of sets of data, each set representative of a plurality of inputs to the neural net and a resulting at least one output from the neural net and calculating a plurality of network weights for the neural network based on the received plurality of sets of data. Calculating the plurality of network weights including attributing greater weight in the calculation to at least one set of the plurality of sets of data than at least one other set of the plurality of sets of data.
    Type: Application
    Filed: October 27, 2005
    Publication date: May 17, 2007
    Inventors: Zhuo Meng, Baofu Duan, Yoh-Han Pao, Ronald Cass
  • Publication number: 20060224532
    Abstract: Systems, methodologies, media, and other embodiments associated with feature weighting in neural networks are described. One exemplary method embodiment includes using a set of weights to scale input feature values. Then the scaled data are used to train a neural net model of the relationship to be learned. The learned model is used to produce a new set of feature weights. The procedure continues iteratively until stopping criteria is met.
    Type: Application
    Filed: October 27, 2005
    Publication date: October 5, 2006
    Applicant: Case Western Reserve University
    Inventors: Baofu Duan, Yoh-Han Pao
  • Patent number: 7092922
    Abstract: An adaptive learning method for automated maintenance of a neural net model is provided. The neural net model is trained with an initial set of training data. Partial products of the trained model are stored. When new training data are available, the trained model is updated by using the stored partial products and the new training data to compute weights for the updated model.
    Type: Grant
    Filed: May 21, 2004
    Date of Patent: August 15, 2006
    Assignee: Computer Associates Think, Inc.
    Inventors: Zhuo Meng, Baofu Duan, Yoh-Han Pao
  • Publication number: 20050159994
    Abstract: A method for plan generation is provided. One or more initial plans are generated and evaluated to determine quality scores for the plans. One or more of the plans is selected according to the quality scores and modified to generate modified plans. The modified plans are evaluated to determine updated quality scores for the modified plans. Selection, modification and evaluation of modified plans are repeated until one of the modified plans is satisfactory.
    Type: Application
    Filed: July 9, 2004
    Publication date: July 21, 2005
    Inventors: David Huddleston, Ronald Cass, Zhuo Meng, Yoh-Han Pao, Ella Polyak Goykhberg, Baofu Duan, Michael Parish
  • Publication number: 20050149518
    Abstract: A method for feature selection based on hierarchical local-region analysis of feature characteristics in a data set of mixed data type is provided. A data space associated with a mixed-type data set is partitioned into a hierarchy of plural local regions. A relationship metric (for example, a similarity correlation metric) is used to evaluate for each local region a relationship measure between input features and a target. One or more relevant features is identified, by using the relationship measure for each local region.
    Type: Application
    Filed: February 28, 2005
    Publication date: July 7, 2005
    Inventors: Baofu Duan, Zhuo Meng, Yoh-Han Pao
  • Patent number: 6907412
    Abstract: The subject system provides reduced-dimension mapping of pattern data. Mapping is applied through conventional single-hidden-layer feed-forward neural network with non-linear neurons. According to one aspect of the present invention, the system functions to equalize and orthogonalize lower dimensional output signals by reducing the covariance matrix of the output signals to the form of a diagonal matrix or constant times the identity matrix. The present invention allows for visualization of large bodies of complex multidimensional data in a relatively “topologically correct” low-dimension approximation, to reduce randomness associated with other methods of similar purposes, and to keep the mapping computationally efficient at the same time.
    Type: Grant
    Filed: March 23, 2001
    Date of Patent: June 14, 2005
    Assignee: Computer Associates Think, Inc.
    Inventors: Yoh-Han Pao, Zhuo Meng
  • Publication number: 20050049913
    Abstract: A method for automated feature selection is provided. One or more initial sets of features are generated and evaluated to determine quality scores for the feature sets. Selected ones of the feature sets are (i) chosen according to the quality scores and modified to generate a generation of modified feature sets, (ii) the modified feature sets are evaluated to determine quality scores for the modified feature sets, and (i) and (ii) are repeated until a modified feature set is satisfactory.
    Type: Application
    Filed: July 9, 2004
    Publication date: March 3, 2005
    Inventors: David Huddleston, Ronald Cass, Zhuo Meng, Yoh-Han Pao, Qian Yang, Xinyu Mao
  • Publication number: 20050033709
    Abstract: An adaptive learning method for automated maintenance of a neural net model is provided. The neural net model is trained with an initial set of training data. Partial products of the trained model are stored. When new training data are available, the trained model is updated by using the stored partial products and the new training data to compute weights for the updated model.
    Type: Application
    Filed: May 21, 2004
    Publication date: February 10, 2005
    Inventors: Zhuo Meng, Baofu Duan, Yoh-Han Pao
  • Publication number: 20050008227
    Abstract: Methods for feature selection based on hierarchical local-region analysis of feature relationships in a data set are provided.
    Type: Application
    Filed: July 8, 2003
    Publication date: January 13, 2005
    Inventors: Baofu Duan, Zhuo Meng, Yoh-Han Pao
  • Publication number: 20040215430
    Abstract: An adaptive system modeling method is provided. A system model is generated by using data corresponding to an input features set selected by using a baseline significance signature of the system. A superset of the input features and other features also is selected by using the baseline significance signature. Data collected from the system corresponding to the superset is maintained online. A new significance signature of the system is periodically or intermittently determined by performing a discriminant analysis using the online superset data, and is used to detect an evolutionary change in the system.
    Type: Application
    Filed: January 20, 2004
    Publication date: October 28, 2004
    Inventors: David Eugene Huddleston, Yoh-Han Pao, Ronald Cass, Qian Yang, Ella Polyak Goykhberg, Peter Cryer, Charles Edward Garofalo
  • Publication number: 20040019574
    Abstract: An apparatus and method for processing mixed data for a selected task is provided. An input transformation module converts mixed data into converted data. A functional mapping module processes the converted data to provide a functional output for the selected task. The selected task may be one or a combination of a variety of possible tasks, including search, recall, prediction, classification, etc. For example, the selected task may be for data mining, database search, targeted marketing, computer virus detection, etc.
    Type: Application
    Filed: April 18, 2003
    Publication date: January 29, 2004
    Inventors: Zhuo Meng, Baofu Duan, Yoh-Han Pao, Ronald J. Cass