Presentation 2004/3/12
Analysis of generalization patterns by categorization strategies
Tasuku SUENAGA, Hideaki ITOH, Kiyohiko NAKAMURA,
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Abstract(in English) It is an open issue whether human cognition of categorization are rule-based or similarity-based. Johansen and Palmeri suggested shifts of categorization strategies with generalization patterns exhibited by subjects who perform categorization tasks. In this paper, we conducted an extended experiment to investigate more details in cognition of each subject. As the result of that experiment, we suggest "the deepening categorization strategy hypothesis" which proposes that unidimensional rules turn to multidimensional rules and similarity-based strategy takes long for subjects to store exemplars. Also we show that hypothesis be able to account for the result of the experimented by Johansen et al.
Keyword(in Japanese) (See Japanese page)
Keyword(in English) Categorization / Rule Model / Exempler Model
Paper # NC2003-199
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Committee NC
Conference Date 2004/3/12(1days)
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Registration To Neurocomputing (NC)
Language JPN
Title (in Japanese) (See Japanese page)
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Title (in English) Analysis of generalization patterns by categorization strategies
Sub Title (in English)
Keyword(1) Categorization
Keyword(2) Rule Model
Keyword(3) Exempler Model
1st Author's Name Tasuku SUENAGA
1st Author's Affiliation Department of Computational Intelligence and Systems Science, Tokyo Institute of Technology()
2nd Author's Name Hideaki ITOH
2nd Author's Affiliation Department of Computational Intelligence and Systems Science, Tokyo Institute of Technology
3rd Author's Name Kiyohiko NAKAMURA
3rd Author's Affiliation Department of Computational Intelligence and Systems Science, Tokyo Institute of Technology
Date 2004/3/12
Paper # NC2003-199
Volume (vol) vol.103
Number (no) 734
Page pp.pp.-
#Pages 6
Date of Issue