2017
DOI: 10.24017/science.2017.3.121
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Feature Selection and Radial Basis Function Network for Parkinson Disease Classification

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“…Inadvisable parameter settings result in inferior classification performance. For the future work, this study can be extend into two part; firstly by improving the performance of GA such as hybrid GA with other method as works done by [22][23][24], and secondly by apply feature selection method in SVM for optimal parameter setting as proposed in [25].…”
Section: Conclusion and Recommendationmentioning
confidence: 99%
“…Inadvisable parameter settings result in inferior classification performance. For the future work, this study can be extend into two part; firstly by improving the performance of GA such as hybrid GA with other method as works done by [22][23][24], and secondly by apply feature selection method in SVM for optimal parameter setting as proposed in [25].…”
Section: Conclusion and Recommendationmentioning
confidence: 99%