Minoru Nishizawa
Toshiba
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Publication
Featured researches published by Minoru Nishizawa.
soft computing | 2015
Shigeaki Sakurai; Minoru Nishizawa
Abstract This paper proposes a method that discovers various sequential patterns from sequential data. The sequential data is a set of sequences. Each sequence is a row of item sets. Many previous methods discover frequent sequential patterns from the data. However, the patterns tend to be similar to each other because they are composed of limited items. The patterns do not always correspond to the interests of analysts. Therefore, this paper tackles on the issue discovering various sequential patterns. The proposed method decides redundant sequential patterns by evaluating the variety of items and deletes them based on three kinds of delete processes. It can discover various sequential patterns within the upper bound for the number of sequential patterns given by the analysts. This paper applies the method to the synthetic sequential data which is characterized by number of items, their kind, and length of sequence. The effect of the method is verified through numerical experiments.
soft computing | 2014
Shigeaki Sakurai; Minoru Nishizawa
This paper proposes a method that discovers various sequential patterns from sequential data. The sequential data is a set of sequences. Each sequence is a row of item sets. Many previous methods discover frequent sequential patterns from the data. However, the patterns tend to be similar to each other because they are composed of limited items. The patterns do not always correspond to the interests of analysts. Therefore, this paper tackles on the issue discovering various sequential patterns. The proposed method discovers them by evaluating the variety of items and deleting redundant patterns based on three kinds of delete processes. It can discover various patterns within the upper bound for the number of sequential patterns given by the analysts. This paper applies the method to the synthetic sequential data which is characterized by number of items, their kind, and length of sequence. The effect of the method is verified through numerical experiments.
Archive | 2008
Yoshihiro Fujii; Minoru Nishizawa; Tatsuro Ikeda; Koji Okada; Tomoaki Morijiri; Hidehisa Takamizawa; Asahiko Yamada
Archive | 2013
Minoru Nishizawa; Seiichiro Tanaka; Tatsuro Ikeda
Archive | 2013
Yuuichirou Esaki; Seiichiro Tanaka; Minoru Nishizawa; Masataka Yamada; Tatsuro Ikeda
Archive | 2013
Minoru Nishizawa; Tatsuro Ikeda; Masataka Yamada; Yuuichirou Esaki; Seiichiro Tanaka
Archive | 2009
Koji Okada; Tatsuro Ikeda; Masataka Yamada; Minoru Nishizawa; Takanori Nakamizo; Toshio Okamoto
Archive | 2009
Tatsuro Ikeda; Koji Okada; Tomoaki Morijiri; Minoru Nishizawa; Hidehisa Takamizawa; Yoshihiro Fujii; Asahiko Yamada
Archive | 2003
Toshiyuki Asanoma; Takehisa Kato; Minoru Nishizawa; Koji Okada; Takuya Yoshida; 岳久 加藤; 琢也 吉田; 光司 岡田; 実 西澤; 利行 麻野間
Archive | 2007
Koji Okada; Tatsuro Ikeda; Masataka Yamada; Minoru Nishizawa; Takanori Nakamizo; Toshio Okamoto