DocumentCode :
605920
Title :
Data classification using PCA based on Effective Variance Coverage (EVC)
Author :
Sasikala, S. ; Balamurugan, S.A.A.
Author_Institution :
Anna Univ., Madurai, India
fYear :
2013
fDate :
25-26 March 2013
Firstpage :
727
Lastpage :
732
Abstract :
Classification analysis of Medical diseases diagnosis has been performed extensively to find out the biological features and to differentiate intimately related diseases types that usually appear in the diagnosis of diseases. Many algorithms and techniques have been developed for the medical diseases classification process. These developed techniques accomplish feature based classification process with the aid of two basic phases namely dimensionality reduction through feature extraction, dimensionality reduction through feature selection. Among various dimensionality reduction techniques, this paper proposed prescribed statistical procedures to efficiently perform the classification process through feature extraction especially using PCA. To further substantiate and to analyze the performance, we conduct a deep study in Principle Component Analysis (PCA). The dimensionality reduction techniques perform the reduction in features through feature extraction and perform data classification with high accuracy. Based on the obtained results, we conclude that the performance study of PCA based on its Variance Coverage Range (VCR) over the several medical data sets work well. The study results that the statistical approach with PCA outperforms the classification performance.
Keywords :
diseases; feature extraction; medical diagnostic computing; patient diagnosis; pattern classification; principal component analysis; statistical analysis; EVC; PCA; VCR; biological features; data classification; dimensionality reduction; effective variance coverage; feature based classification process; feature extraction; feature selection; medical disease classification process; medical disease diagnosis; principle component analysis; statistical approach; statistical procedures; variance coverage range; Accuracy; Covariance matrices; Diseases; Eigenvalues and eigenfunctions; Feature extraction; Principal component analysis; Vectors; Classification; Dimensionality reduction; Effective Variance Coverage (EVC); Feature extraction; Multiple classifiers; Principal Component Analysis; classification accuracy;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Emerging Trends in Computing, Communication and Nanotechnology (ICE-CCN), 2013 International Conference on
Conference_Location :
Tirunelveli
Print_ISBN :
978-1-4673-5037-2
Type :
conf
DOI :
10.1109/ICE-CCN.2013.6528600
Filename :
6528600
Link To Document :
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