딥러닝 기반 앙상블을 이용한 유방암 분류open accessBreast Cancer Classification using Deep Learning-based Ensemble
- Other Titles
- Breast Cancer Classification using Deep Learning-based Ensemble
- Authors
- 최도연; 정광모; 임동훈
- Issue Date
- 2018
- Publisher
- 한국보건정보통계학회
- Keywords
- Breast cancer; Classification; Deep learning; Ensemble; Performance evaluation
- Citation
- 보건정보통계학회지, v.43, no.2, pp 140 - 147
- Pages
- 8
- Indexed
- KCI
- Journal Title
- 보건정보통계학회지
- Volume
- 43
- Number
- 2
- Start Page
- 140
- End Page
- 147
- URI
- https://scholarworks.gnu.ac.kr/handle/sw.gnu/12766
- DOI
- 10.21032/jhis.2018.43.2.140
- ISSN
- 2465-8014
2465-8022
- Abstract
- Objectives: We propose a deep learning-based ensemble for improving breast cancer classification and compare it with existing six models including deep neural network on two UCI data. Methods: We propose a deep learning-based stacking ensemble method. We first applied five classifications methods individually, which were k-nearest neighbor, decision trees, support vector machines, discriminant analysis, and logistic regression analysis and then adopt a deep learning to the predictions derived from these methods after using 5-fold cross validation technique. We compared the proposed deep learning-based ensemble method with these methods for two UCI data through classification accuracy, ROC curves and c-statistics. Results: Exper imental results for two UCI data showed that the proposed deep learning-based ensemble outperformed single k-nearest neighbor, decision trees, sup port vector machines discriminant analysis, and logistic regression analysis as well as deep neural network in terms of various performance measures.
Conclusions: We proposed deep learning-based ensemble for improving breast cancer classification. The deep learning-based ensemble outperformed existing single models for all applications in terms of various performance measures.
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