DocumentCode :
3127059
Title :
An efficient feature selection paradigm using PCA-CFS-Shapley values ensemble applied to small medical data sets
Author :
Sasikala, S. ; Appavu Alias Balamurugan, S. ; Geetha, S.
Author_Institution :
Anna Univ., Chennai, India
fYear :
2013
fDate :
4-6 July 2013
Firstpage :
1
Lastpage :
5
Abstract :
The precise diagnosis of patient profiles into categories, such as presence or absence of a particular disease along with its level of severity, remains to be a crucial challenge in biomedical field. This process is realized by the performance of the classifier by using a supervised training set with labeled samples. Then based on the result obtained, the classifier is allowed to predict the labels of new samples. Due to presence of irrelevant features it is difficult for standard classifiers from obtaining good detection rates. Hence it is important to select the features which are more relevant and by with good classifiers could be constructed to obtain a good accuracy and efficiency. This study is aimed to classify the medical profiles, and is realized by feature extraction (FE), feature ranking (FR) and dimension reduction methods (Shapley Values Analysis) as a hybrid procedure to improve the classification efficiency and accuracy. To appraise the success of the proposed method, experiments were conducted across 6 different medical data sets using J48 decision tree classifier. The experimental results showed that using the PCA-CFS-Shapley Values analysis procedure improves the classification efficiency and accuracy compared with individual usage.
Keywords :
data mining; decision trees; feature extraction; feature selection; learning (artificial intelligence); medical administrative data processing; pattern classification; principal component analysis; J48 decision tree classifier; PCA-CFS-Shapley value analysis; biomedical field; dimension reduction methods; feature extraction; feature ranking; feature selection paradigm; medical data sets; medical profile classification; precise patient profile diagnosis; supervised training set; Diabetes; Diseases; Feature extraction; Medical diagnostic imaging; Principal component analysis; Sensitivity; Classification; Data mining; Dimensionality reduction; Feature Extraction; Feature selection; Principal component analysis; Shapley value Analysis;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Computing, Communications and Networking Technologies (ICCCNT),2013 Fourth International Conference on
Conference_Location :
Tiruchengode
Print_ISBN :
978-1-4799-3925-1
Type :
conf
DOI :
10.1109/ICCCNT.2013.6726773
Filename :
6726773
Link To Document :
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