• DocumentCode
    2863452
  • Title

    Support vector machines trained by linear programming: theory and application in image compression and data classification

  • Author

    Hadzic, Ivana ; Kecman, Vojislav

  • Author_Institution
    Dept. of Mech. Eng., Auckland Univ., New Zealand
  • fYear
    2000
  • fDate
    2000
  • Firstpage
    18
  • Lastpage
    23
  • Abstract
    This paper formulates the learning of support vector machines (SVM) as a linear programming problem. An SVM has the property that it chooses the minimum number of data points to use as the centres for the Gaussian kernel functions in order to approximate the training data within a given error. A linear programming (LP) based method is proposed for solving both regression and classification problem. Examples of function approximation and class separation illustrate the efficiency of the proposed method. In addition, the paper explores the possibility of using SVM with radial basis function kernels to compress an image. Our results show that image compression of around 20:1 is achievable while maintaining good image quality
  • Keywords
    computational complexity; data compression; image coding; learning automata; linear programming; pattern classification; radial basis function networks; statistical analysis; Gaussian kernel functions; LP based method; SVM; class separation; classification problem; data classification; function approximation; image compression; learning; linear programming; radial basis function kernels; regression problem; support vector machines; training data approximation; Image coding; Kernel; Linear programming; Machine learning; Mechanical engineering; Neural networks; Pixel; Quadratic programming; Support vector machine classification; Support vector machines;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Neural Network Applications in Electrical Engineering, 2000. NEUREL 2000. Proceedings of the 5th Seminar on
  • Conference_Location
    Belgrade
  • Print_ISBN
    0-7803-5512-1
  • Type

    conf

  • DOI
    10.1109/NEUREL.2000.902376
  • Filename
    902376