DocumentCode :
2215742
Title :
MFE-HC: The maximizing feature elimination technique based hybrid classifier for cancer molecular pattern discovery
Author :
Julie, I. ; Kirubakaran, E.
Author_Institution :
Dept. of Comput. Sci., Arignar Anna Gov. Arts Coll., Musiri, India
fYear :
2012
fDate :
21-23 March 2012
Firstpage :
376
Lastpage :
380
Abstract :
The most important application of Microarray for gene expression analysis is used to discover or classify the unknown tissue samples with the help of known tissue samples. Several Data Mining Classifiers have been proposed recently to predict/identify the cancer patterns. In this research work, we have focused and studied a few Classification Techniques such as Support Vector Machine (SVM), Nearest Neighbor Classifier (k-NN), ICS4, Non-Parallel Plane Proximal Classifier (NPPC), NPPC-SVM, and Margin-based Feature Elimination-SVM (MFE-SVM). The performances of these classifiers have been analyzed in terms of Threshold Level, Execution Time, Memory Usage and Memory Utilization. From our experimental results, we revealed that the Threshold level and Execution Time to predict the Cancer Patterns are different for different Classifiers. Our experimental results established that among the above identified classifiers, the k-NN classifier achieves less Threshold to predict the cancer pattern, but however it consumes more execution time, whereas the MFE-SVM achieves less execution time to predict the cancer pattern, but it still needs more threshold to predict the Pattern. That is to find the best single classifier in terms of Threshold and Execution Time is still complicated. To address this major issue, we have proposed an efficient Classifier called Maximizing Feature Elimination Technique based Hybrid Classifier (MFE-HC), which is the combination of both k-NN and SVM classifiers. From the results, it is established that our proposed work performs better than both the k-NN and MFE-SVM Classifiers interms of Threshold and Execution Time.
Keywords :
cancer; data mining; medical computing; pattern classification; support vector machines; MFE-HC; Microarray application; NPPC; SVM; cancer molecular pattern discovery; cancer patterns; data mining classifiers; execution time; feature elimination technique; gene expression analysis; hybrid classifier; k-NN; margin based feature elimination-SVM; memory usage; memory utilization; nearest neighbor classifier; nonparallel plane proximal classifier; support vector machine; threshold level; tissue samples; Bioinformatics; Bladder; Cancer; Data mining; Informatics; Support vector machines; ICS4; MFE-SVM; NPPC; NPPC-SVM; Pattern Recognition; SVM; k-NN;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Pattern Recognition, Informatics and Medical Engineering (PRIME), 2012 International Conference on
Conference_Location :
Salem, Tamilnadu
Print_ISBN :
978-1-4673-1037-6
Type :
conf
DOI :
10.1109/ICPRIME.2012.6208375
Filename :
6208375
Link To Document :
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