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유방암 분류 성능 향상을 위한 배깅 서포트 벡터 머신Bagging Support Vector Machine for Improving Breast Cancer Classification

Other Titles
Bagging Support Vector Machine for Improving Breast Cancer Classification
Authors
임진수오윤식임동훈
Issue Date
2014
Publisher
한국보건정보통계학회
Keywords
Classification; Breast cancer; Support vector machine; Performance evaluation; Bagging support vector machine
Citation
보건정보통계학회지, v.39, no.1, pp 15 - 24
Pages
10
Indexed
KCICANDI
Journal Title
보건정보통계학회지
Volume
39
Number
1
Start Page
15
End Page
24
URI
https://scholarworks.gnu.ac.kr/handle/sw.gnu/19835
ISSN
2465-8014
2465-8022
Abstract
Objectives: We proposed bagging SVM which constructs SVM ensembles using bagging for improving breast cancer classification. Methods: Each individual SVM was trained independently using the randomly chosen training samples via a bootstrap technique. Then, they were aggregated into to make a collective decision in aggregation strategy such as the majority voting. We compared the proposed bagging SVM model with existing single models such as discriminant analysis, logistic regression analysis, decision tree, support vector machines for two UCI data and simulated data. Performance of these techniques was compared through accuracy, positive predictive value, negative predictive value, sensitivity, specificity and F-score. Results: Experimental results for two UCI data and the simulated data showed that the proposed bagging SVM model outperformed single SVM, discriminant analysis, logistic regression analysis, decision tree and neural network in terms of various performance measures. Conclusions: We proposed bagging SVM for improving breast cancer classification. The bagging SVM ensembles outperformed existing single models for all applications in terms of various performance measures. Keywords: Classification, Breast cancer, Support vector machine, Performance evaluation, Bagging support vector machine
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자연과학대학 > Dept. of Information and Statistics > Journal Articles

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