Multi-objective optimization based on meta-modeling by using support vector regression

Yeboon Yun1, Min Yoon2, Hirotaka Nakayama3
1Faculty of Engineering, Kagawa University, Kagawa, Japan
2Konkuk University, Seoul, Republic of Korea
3Konan University, Kobe, Japan

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