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최적의 서포트 벡터 머신을 이용한 유방암 분류Breast Cancer Classification Using Optimal Support Vector Machine

Other Titles
Breast Cancer Classification Using Optimal Support Vector Machine
Authors
임진수임동훈손진영손주태
Issue Date
2013
Publisher
한국보건정보통계학회
Keywords
Classification; Breast cancer; Support vector machine; Performance evaluation; Optimal parameter
Citation
보건정보통계학회지, v.38, no.1, pp 108 - 121
Pages
14
Indexed
KCICANDI
Journal Title
보건정보통계학회지
Volume
38
Number
1
Start Page
108
End Page
121
URI
https://scholarworks.gnu.ac.kr/handle/sw.gnu/21382
ISSN
2465-8014
2465-8022
Abstract
Objectives: This paper is to examine breast cancer classification using support vector machine (SVM). SVM with optimal parameters obtained using the improved grid search with 5-fold cross validation has been proposed to reach the optimal classification performance. Methods: Two data sets, Wisconsin Original Breast Cancer (WOBC) and Wisconsin Diagnostic Breast Cancer (WDBC) data set, were used to classify tumors as benign and malignant. SVM model performs the classification tasks using optimal kernel parameter and penalty parameter using 5-fold cross validation. Discriminant analysis, logistic regression analysis, decision tree, support vector machines were applied to analyze two data sets. Performance of these techniques was compared through accuracy, ROC curves and c-statistics. Results: Our analysis showed that SVMs predicted breast cancer with highest accuracy and c-statistics among four classification models. A comparison of these SVMs indicated that SVM with optimal parameters has much superior performance than SVM with default parameters. Conclusions: Research efforts have reported with increasing confirmation that SVMs have greater accurate diagnosis ability. In this paper, breast cancer diagnosis based on SVM with optimal parameters obtained using the improved grid search with 5-fold cross validation has been proposed. The performance of the method is evaluated using classification accuracy, ROC curves and c-statistics.
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College of Medicine > Department of Medicine > Journal Articles
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