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We consider music classification problems. A typical ma-chine learning approach is to use support vector machines with some kernels. This approach, however, does not seem to be successful enough for c...lassifying music data in our experiments. In this paper, we follow an alternative approach. We employ a (dis)similarity-based learning framework proposed by Wang et al. This (dis)similarity-based approach has a theoretical guarantee that one can obtain accurate classifiers using (dis)similarity measures under a natural assumption. We demonstrate the effectiveness of our approach in computational experiments using Japanese MIDI data.続きを見る
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