Consistency Based Partial Label Learning Algorithm
TANG Caizhi, ZHANG Minling
School of Computer Science and Engineering, Southeast University, Nanjing 210096 Key Laboratory of Computer Network and Information Integration, Ministry of Education,Southeast University, Nanjing 210096
Abstract:An essential strategy to solve the partial label problem is disambiguation. In most existing strategies, instances are individually disambiguated without the consideration of the relationships among instances. In this paper, a consistency based partial label learning (COPAL) algorithm is proposed assumpting that labels associated with similar instances are likely to be similar. Based on the above assumption, the labeling information of the instance itself and its neighboring instances are simultaneously utilized for disambiguation. Experiments on both artificial datasets and realworld datasets show the good generalization ability of COPAL.
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