• Login
    View Item 
    •   MINDS@UW Home
    • MINDS@UW Madison
    • College of Letters and Science, University of Wisconsin–Madison
    • Department of Computer Sciences, UW-Madison
    • Math Prog Technical Reports
    • View Item
    •   MINDS@UW Home
    • MINDS@UW Madison
    • College of Letters and Science, University of Wisconsin–Madison
    • Department of Computer Sciences, UW-Madison
    • Math Prog Technical Reports
    • View Item
    JavaScript is disabled for your browser. Some features of this site may not work without it.

    Projection Support Vector Machines

    Thumbnail
    File(s)
    Projection Support Vector Machines (132.3Kb)
    Date
    2000
    Author
    Meyer, Robert
    Gonzalez-Castano, Francisco
    Metadata
    Show full item record
    Abstract
    Large-scale classification is a very active research line in data mining. It can be applied to problems like credit card fraud detection or content-based document browsing. In recent years, several efficient algorithms for this area have been proposed by Mangasarian and Musicant. These approaches, based on quadratic problems, are: Successive OverRelaxation (SOR), Active Support Vector Machines (ASVM) and Lagrangian Support Vector Machines (LSVM). These algorithms have solved linear classification problems with millions of points. ASVM is perhaps the fastest and more scalable among them. This paper presents a projection-based SVM algorithm that outperforms ASVM on a 50,000 point data set generated by means of NDC (Normally Distributed Clusters), which has become a common tool in large-scales SVM research.
    Subject
    support vector machines
    Permanent Link
    http://digital.library.wisc.edu/1793/64514
    Type
    Technical Report
    Citation
    00-05
    Part of
    • Math Prog Technical Reports

    Contact Us | Send Feedback
     

     

    Browse

    All of MINDS@UWCommunities & CollectionsBy Issue DateAuthorsTitlesSubjectsThis CollectionBy Issue DateAuthorsTitlesSubjects

    My Account

    Login

    Contact Us | Send Feedback