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Induction of robust classifiers for web ontologies through kernel machines
Affiliation:1. College of Technological Innovations, Zayed University, United Arab Emirates;2. School of Computing, University of the West of Scotland, United Kingdom;3. Department of Computer Engineering, Kyung Hee University, Republic of Korea;4. Department of Computer Science, Innopolis University, Russia;5. School of Electrical Engineering and Computer Science, NUST, Pakistan;1. Aragon Institute of Engineering Research (I3A), University of Zaragoza, Spain;2. Istituto di Scienza e Tecnologie dell''Informazione, Consiglio Nazionale delle Ricerche (ISTI-CNR), Pisa, Italy;1. College of Computer, Minnan Normal University, Zhang''zhou, Fu''jian 363000, China;2. School of Mathematics and Statistics, Minnan Normal University, Zhang''zhou, Fu''jian 363000, China;3. Key Laboratory of Data Science and Intelligence Application, Fujian Province University, Fu''jian 363000, China;4. Key Laboratory of Granular Computing, Minnan Normal University, Zhangzhou 363000, China;1. Dip. Matematica e Informatica, Università di Perugia, 06100 Perugia, Italy;2. Dip. S.B.A.I., “La Sapienza” Università di Roma, 00185 Roma, Italy
Abstract:The paper focuses on the task of approximate classification of semantically annotated individual resources in ontological knowledge bases. The method is based on classification models built through kernel methods, a well-known class of effective statistical learning algorithms. Kernel functions encode a notion of similarity among elements of some input space. The definition of a family of parametric language-independent kernel functions for individuals occurring in an ontology allows the application of these statistical learning methods on Semantic Web knowledge bases. The classification models induced by kernel methods offer an alternative way to classify individuals with respect to the typical exact and approximate deductive reasoning procedures. The proposed statistical setting enables further inductive approaches to a variety of other tasks that can better cope with the inherent incompleteness of the knowledge bases in the Semantic Web and with their potential incoherence due to their distributed nature. The effectiveness of the proposed method is empirically proved through experiments on the task of approximate classification with real ontologies collected from standard repositories.
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