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A Feature Selection-based Ensemble Method for Arrhythmia Classification
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  • A Feature Selection-based Ensemble Method for Arrhythmia Classification
  • A Feature Selection-based Ensemble Method for Arrhythmia Classification
저자명
Namsrai. Erdenetuya,Munkhdalai. Tsendsuren,Li. Meijing,Shin. Jung-Hoon,Namsrai. Oyun-Erdene,Ryu. Keun Ho
간행물명
Journal of information processing systems
권/호정보
2013년|9권 1호|pp.31-40 (10 pages)
발행정보
한국정보처리학회
파일정보
정기간행물|ENG|
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이 논문은 한국과학기술정보연구원과 논문 연계를 통해 무료로 제공되는 원문입니다.
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기타언어초록

In this paper, a novel method is proposed to build an ensemble of classifiers by using a feature selection schema. The feature selection schema identifies the best feature sets that affect the arrhythmia classification. Firstly, a number of feature subsets are extracted by applying the feature selection schema to the original dataset. Then classification models are built by using the each feature subset. Finally, we combine the classification models by adopting a voting approach to form a classification ensemble. The voting approach in our method involves both classification error rate and feature selection rate to calculate the score of the each classifier in the ensemble. In our method, the feature selection rate depends on the extracting order of the feature subsets. In the experiment, we applied our method to arrhythmia dataset and generated three top disjointed feature sets. We then built three classifiers based on the top-three feature subsets and formed the classifier ensemble by using the voting approach. Our method can improve the classification accuracy in high dimensional dataset. The performance of each classifier and the performance of their ensemble were higher than the performance of the classifier that was based on whole feature space of the dataset. The classification performance was improved and a more stable classification model could be constructed with the proposed approach.