Title of article
Intelligent Optimization Methods for High-Dimensional Data Classification for Support Vector Machines
Author/Authors
Sheng Ding، نويسنده , , Li Chen، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2010
Pages
11
From page
1
To page
11
Abstract
Support vector machine (SVM) is a popular pattern classification method with many application areas. SVM
shows its outstanding performance in high-dimensional data classification. In the process of classification,
SVM kernel parameter setting during the SVM training procedure, along with the feature selection significantly
influences the classification accuracy. This paper proposes two novel intelligent optimization methods,
which simultaneously determines the parameter values while discovering a subset of features to increase
SVM classification accuracy. The study focuses on two evolutionary computing approaches to optimize the
parameters of SVM: particle swarm optimization (PSO) and genetic algorithm (GA). And we combine above
the two intelligent optimization methods with SVM to choose appropriate subset features and SVM parameters,
which are termed GA-FSSVM (Genetic Algorithm-Feature Selection Support Vector Machines) and
PSO-FSSVM(Particle Swarm Optimization-Feature Selection Support Vector Machines) models. Experimental
results demonstrate that the classification accuracy by our proposed methods outperforms traditional
grid search approach and many other approaches. Moreover, the result indicates that PSO-FSSVM can obtain
higher classification accuracy than GA-FSSVM classification for hyperspectral data.
Keywords
Support vector machine (SVM) , Genetic algorithm (GA) , Particle swarm optimization (PSO) , Feature selection , ptimization
Journal title
Intelligent Information Management
Serial Year
2010
Journal title
Intelligent Information Management
Record number
664400
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