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Applying semi-supervised learning in hierarchical multi-label classification
Affiliation:1. Exact, Technology and Human Sciences Department, Federal Rural University of Semi-Arido, Angicos, RN 59515-000, Brazil;2. Department of Informatics and Applied Mathematics (DIMAp), Federal University of RN, Brazil;1. CEFET-RJ, Brazil;2. PROSAICO – PEL/DETEL – UERJ, Brazil;3. PEE/COPPE/DEL/Poli, UFRJ, Brazil;1. Defense Research and Development Organization, Ministry of Defense, Delhi, India;2. Department of Electronics and Communication, Delhi Technological University (formerly DCE), Bawana Road, Delhi, India;1. Instituto Superior Técnico, Universidade de Lisboa, Av. Prof. Dr. Aníbal Cavaco Silva, 2744-016 Porto Salvo, Portugal;2. INESC-ID Lisboa, Av. Prof. Dr. Aníbal Cavaco Silva, 2744-016 Porto Salvo, Portugal
Abstract:In classification problems with hierarchical structures of labels, the target function must assign labels that are hierarchically organized and it can be used either for single-label (one label per instance) or multi-label classification problems (more than one label per instance). In parallel to these developments, the idea of semi-supervised learning has emerged as a solution to the problems found in a standard supervised learning procedure (used in most classification algorithms). It combines labelled and unlabelled data during the training phase. Some semi-supervised methods have been proposed for single-label classification methods. However, very little effort has been done in the context of multi-label hierarchical classification. Therefore, this paper proposes a new method for supervised hierarchical multi-label classification, called HMC-RAkEL. Additionally, we propose the use of semi-supervised learning, self-training, in hierarchical multi-label classification, leading to three new methods, called HMC-SSBR, HMC-SSLP and HMC-SSRAkEL. In order to validate the feasibility of these methods, an empirical analysis will be conducted, comparing the proposed methods with their corresponding supervised versions. The main aim of this analysis is to observe whether the semi-supervised methods proposed in this paper have similar performance of the corresponding supervised versions.
Keywords:Multi-label classification  Hierarchical classification  Semi-supervised learning
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