Title: Subhealth state classification with AdaBoost learner
Authors: Sheng Sun; Zhiya Zuo; Guo-Zheng Li; Xiaobo Yang
Addresses: Department of Control Science and Engineering, Tongji University, Shanghai, 201804, China ' Department of Control Science and Engineering, Tongji University, Shanghai, 201804, China ' Department of Control Science and Engineering, Tongji University, Shanghai, 201804, China ' The 2nd Affiliated Hospital, Guangzhou University of Chinese Medicine, Guangzhou, 510120, China
Abstract: Biopsychosocial approaches are the mainstay diagnostic methods for subhealth. This paper introduces the AdaBoost Learner to handle this issue. AdaBoost algorithm combine a series of weak classifiers, each of which performs slightly better than random guessing, to a strong one. In this paper, the AdaBoost Learners with discriminant classifiers and decision trees are built and two strong classifiers, support vector machine (SVM) and k-nearest neighbour (kNN), are adopted as control experiments. Two classification processes are constructed to distinguish health states and subhealth types respectively, where Fisher Score feature selection is for comparing performance with different feature subsets. Results indicate that the AdaBoost Learner with decision trees is the best among four classifiers in health states classification while the one with discriminant classifiers has the greatest performance in subhealth types classification. In health states classification, the highest accuracy reached 85.76% with 320 questions and 87.58% with 120 questions in subhealth types classification.
Keywords: subhealth diagnosis; ensemble; AdaBoost Learner; discriminant classifiers; decision trees; SVM; support vector machines; kNN; k-nearest neighbour; health state classification; state of health.
DOI: 10.1504/IJFIPM.2013.057406
International Journal of Functional Informatics and Personalised Medicine, 2013 Vol.4 No.2, pp.167 - 179
Received: 09 May 2013
Accepted: 17 Aug 2013
Published online: 29 Oct 2013 *