Application of the theory of KM_2O-Langevin equations to the non-linear prediction problem for the one- dimensional strictly stationary time series Dedicated to Professor Kiyoshi Ito on his seventy-seven birthday
スポンサーリンク
概要
著者
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Okabe Yasunori
Department Of Mathematical Engineering And Information Physics Graduate School And Faculty Of Engine
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Okabe Yasunori
Department Of Mathematics Faculty Of Science Hokkaido University
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Ootsuka Takashi
Department Of Mathematics Faculty Of Science Hokkaido University
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