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An empirical study on improving dissimilarity-based classifications using one-shot similarity measure
Affiliation:2. Department of Psychology, University of Georgia, Athens, GA, United States;1. Department of Security Convergence, General Graduate School, Chung-Ang University, Korea;2. Department of Cyber Security, Far East University, Korea;3. Department of Industrial Security, College of Business and Economics, Chung-Ang University, Korea;1. School of Electrical & Electronic Engineering, Biometrics Engineering Research Center (BERC) Yonsei University, 50 Yonsei-ro, Seodaemun-gu, Seoul 120-749, Republic of Korea;2. Mobile Communications Business, Samsung Electronics Co., Ltd, Maetan 3-dong, Yeongtong-gu, Suwon-si, Gyeonggi-do, 443-742, Republic of Korea;1. RISE SICS AB, Lund, Sweden;2. Blekinge Institute of Technology, Karlskrona, Sweden
Abstract:This paper reports an experimental result obtained by additionally using unlabeled data together with labeled ones to improve the classification accuracy of dissimilarity-based methods, namely, dissimilarity-based classifications (DBC) 25]. In DBC, classifiers among classes are not based on the feature measurements of individual objects, but on a suitable dissimilarity measure among the objects instead. In order to measure the dissimilarity distance between pairwise objects, an approach using the one-shot similarity (OSS) 30] measuring technique instead of the Euclidean distance is investigated in this paper. In DBC using OSS, the unlabeled set can be used to extend the set of prototypes as well as to compute the OSS distance. The experimental results, obtained with artificial and real-life benchmark datasets, demonstrate that designing the classifiers in the OSS dissimilarity matrices instead of expanding the set of prototypes can further improve the classification accuracy in comparison with the traditional Euclidean approach. Moreover, the results demonstrate that the proposed setting does not work with non-Euclidean data.
Keywords:Statistical pattern recognition  Dissimilarity-based classification (DBC)  Semi-supervised learning (SSL)  One-shot similarity (OSS) measure
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