• Title of article

    A meta-heuristicapproachforimprovingtheaccuracyinsome classification algorithms

  • Author/Authors

    Huy NguyenAnhPham، نويسنده , , EvangelosTriantaphyllou، نويسنده ,

  • Issue Information
    ماهنامه با شماره پیاپی سال 2011
  • Pages
    16
  • From page
    174
  • To page
    189
  • Abstract
    Currentclassificationalgorithmsusuallydonottrytoachieveabalancebetweenfittingand generalizationwhentheyinfermodelsfromtrainingdata.Furthermore,currentalgorithmsignore the factthattheremaybedifferentpenaltycostsforthefalse-positive,false-negative,andunclassifiable types. Thus,theirperformancemaynotbeoptimalormayevenbecoincidental.Thispaperproposesa meta-heuristicapproach,calledtheConvexityBasedAlgorithm(CBA),toaddresstheseissues.Thenew approachaimsatoptimallybalancingthedatafittingandgeneralizationbehaviorsofmodelswhen sometraditionalclassificationapproachesareused.TheCBAfirstdefinesthetotalmisclassificationcost (TC) asaweightedfunctionofthethreepenaltycostsandthecorrespondingerrorratesasmentioned above. Nextitpartitionsthetrainingdataintoregions.Thisisdoneaccordingtosomeconvexity propertiesderivablefromthetrainingdataandthetraditionalclassificationmethodtobeusedin conjunctionwiththeCBA.NexttheCBAusesageneticapproachtodeterminetheoptimallevelsof fitting andgeneralization.The TC is usedasthefitnessfunctioninthisgeneticapproach.Twelvereal- life datasetsfromawidespectrumofdomainswereusedtobetterunderstandtheeffectivenessofthe proposedapproach.ThecomputationalresultsindicatethattheCBAmaypotentiallyfillinacriticalgap in theuseofcurrentorfutureclassificationalgorithms.
  • Keywords
    classification , Fitting , False positive , Generalization , False negative , Unclassifiable , Convex region , Genetic algorithms , Optimization
  • Journal title
    Computers and Operations Research
  • Serial Year
    2011
  • Journal title
    Computers and Operations Research
  • Record number

    927845