A support vector regression based prediction model of affective responses for product form design

Computers & Industrial Engineering - Tập 59 - Trang 682-689 - 2010
Chih-Chieh Yang1, Meng-Dar Shieh2
1Department of Multimedia and Entertainment Science, Southern Taiwan University, 1 Nantai Street, Yung-Kang City, Tainan County 71005, Taiwan, ROC
2Department of Industrial Design, National Cheng Kung University, No. 1, University Road, Tainan 70101, Taiwan, ROC

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