Takaya Yamamoto
Fujitsu
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Featured researches published by Takaya Yamamoto.
ieee symposium series on computational intelligence | 2016
Shinji Kikuchi; Keizo Kato; Junya Saito; Kentaro Murase; Takaya Yamamoto; Akira Nakagawa
We propose a method to estimate the artistic quality of Haiku (Japanese style short poem) texts using a machine learning approach. Based on the assumption that the artistry of a text stems from its sound factors as well as its meanings, we first constructed two types of vector models, a word-based model and a syllable-based model, converted from Haiku texts. Next, we conducted machine learning for these two models using a convolutional neural network to construct a Haiku quality estimation function. We then evaluated the precision of quality estimation for 40,000 Japanese Haiku poems obtained from a Haiku community site, assuming that the number of “likes” given from viewers to a Haiku corresponds to its artistic quality. Through the experiment, we confirmed that by conducting a quality estimation based on the consensus between different models, we can improve the precision of quality estimation up to 0.64. We also found that if we evaluate Haiku poems for which we have high confidence in quality estimation certainty, the F-measure of the estimation improved from 0.57 to 0.64.
Archive | 1997
Akiko Yoshida; Takaya Yamamoto
Archive | 2001
Eiji Okano; Takaya Yamamoto
Archive | 1998
Keiichi Otani; Takaya Yamamoto
Archive | 1994
Motoharu Usumi; Takaya Yamamoto
Archive | 1999
Tomoko Kishi; Takaya Yamamoto
Archive | 1998
Keiichi Otani; Masaharu Matsumoto; Koji Yano; Atsuo Serikawa; Takaya Yamamoto
Archive | 1998
Eiji Okano; Takaya Yamamoto
Archive | 2010
Yasuji Ota; Masanao Suzuki; Kaori Endo; Takeshi Otani; Takaya Yamamoto
Archive | 1999
Keiichi Otani; Takaya Yamamoto