Paper:
Basic Study on the Classification of Time Series Data Using a Frequency Integrated Spherical Hidden Markov Self Organizing Map
Gen Niina, Hiroshi Dozono, and Kazuhiro Muramatsu
Faculty of Science and Engineering, Saga University
1-Honjyo, Saga 840-8502, Japan
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