高次元小標本における統計的推測 [in Japanese] Statistical inference in highdimensional, low sample size settings [in Japanese]

 青嶋 誠 Aoshima Makoto
 筑波大学数理物質系 Institute of Mathematics, University of Tsukuba

 矢田 和善 Yata Kazuyoshi
 筑波大学数理物質系 Institute of Mathematics, University of Tsukuba
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Author(s)

 青嶋 誠 Aoshima Makoto
 筑波大学数理物質系 Institute of Mathematics, University of Tsukuba

 矢田 和善 Yata Kazuyoshi
 筑波大学数理物質系 Institute of Mathematics, University of Tsukuba
Journal

 SUGAKU

SUGAKU 65(3), 225247, 20130725
The Mathematical Society of Japan
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