Determining appropriate of Data Classification with Multi-Layer Perceptron, Support Vector Machines and Radial Basis Function
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Date
2012Author
วัชรินทร์ วรินทักษะ
กิตติศักดิ์ โชติกิติพัฒน์
ทรงพล นคเรศเรืองศักดิ์
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This research is using data mining to compare the
identification information of the model created by the
Multi-layer Perceptron Neural Network, Support Vector
Machines and Redial Basis Function. The model
consisted of 30 models of three series data from the UCI
that features different is Vote, Audiology and Ionosphere
to measure the efficiency and accuracy of data
classification, Precision, Recall and quality measurement
(F-measure).
The results showed that the model based on support
vector machine (SVM) performance is 97.25%, followed
by the creation of a Redial Basis Function (RBF) is
96.80% and the final model based on Multilayer
Perceptron (MLP) is 96.09%, respectively.