Patents by Inventor Mirsad Hadzikadic

Mirsad Hadzikadic 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: 7873643
    Abstract: The present invention provides mathematical model-based incremental clustering methods for classifying sets of data and predicting new data values, based upon the concepts of similarity and cohesion. In order to increase processing efficiency, these methods employ weighted attribute relevance in building unbiased classification trees and sum pairing to reduce the number of nodes visited when performing classification or prediction operations. In order to increase prediction accuracy, these methods employ weighted voting over each value of target attributes to calculate a prediction profile. The present invention allows an operator to determine the importance of attributes and reconstitute classification trees without those attributes deemed unimportant to further increase classification structure node processing efficiency.
    Type: Grant
    Filed: March 19, 2007
    Date of Patent: January 18, 2011
    Assignee: University of North Carolina at Charlotte
    Inventors: Mirsad Hadzikadic, Benjamin F. Bohren, Christopher N. Eichelberger
  • Publication number: 20070162473
    Abstract: The present invention provides mathematical model-based incremental clustering methods for classifying sets of data and predicting new data values, based upon the concepts of similarity and cohesion. In order to increase processing efficiency, these methods employ weighted attribute relevance in building unbiased classification trees and sum pairing to reduce the number of nodes visited when performing classification or prediction operations. In order to increase prediction accuracy, these methods employ weighted voting over each value of target attributes to calculate a prediction profile. The present invention also allows an operator to determine the importance of attributes and reconstitute classification trees without those attributes deemed unimportant to further increase classification structure node processing efficiency.
    Type: Application
    Filed: March 19, 2007
    Publication date: July 12, 2007
    Applicant: UNIVERSITY OF NORTH CAROLINA AT CHARLOTTE
    Inventors: Mirsad Hadzikadic, Benjamin Bohren, Christopher Eichelberger
  • Patent number: 7213023
    Abstract: The present invention provides mathematical model-based incremental clustering methods for classifying sets of data and predicting new data values, based upon the concepts of similarity and cohesion. In order to increase processing efficiency, these methods employ weighted attribute relevance in building unbiased classification trees and sum pairing to reduce the number of nodes visited when performing classification or prediction operations. In order to increase prediction accuracy, these methods employ weighted voting over each value of target attributes to calculate a prediction profile. The present invention also allows an operator to determine the importance of attributes and reconstitute classification trees without those attributes deemed unimportant to further increase classification structure node processing efficiency.
    Type: Grant
    Filed: May 14, 2001
    Date of Patent: May 1, 2007
    Assignee: University of North Carolina at Charlotte
    Inventors: Mirsad Hadzikadic, Benjamin F. Bohren, Christopher N. Eichelberger
  • Publication number: 20020059202
    Abstract: The present invention provides mathematical model-based incremental clustering methods for classifying sets of data and predicting new data values, based upon the concepts of similarity and cohesion. In order to increase processing efficiency, these methods employ weighted attribute relevance in building unbiased classification trees and sum pairing to reduce the number of nodes visited when performing classification or prediction operations. In order to increase prediction accuracy, these methods employ weighted voting over each value of target attributes to calculate a prediction profile. The present invention also allows an operator to determine the importance of attributes and reconstitute classification trees without those attributes deemed unimportant to further increase classification structure node processing efficiency.
    Type: Application
    Filed: May 14, 2001
    Publication date: May 16, 2002
    Inventors: Mirsad Hadzikadic, Benjamin F. Bohren, Christopher N. Eichelberger