E-quality control: A support vector machines approach |
Tseng, Tzu-Liang (Bill)
(Department of Industrial, Manufacturing and Systems Engineering, The University of Texas at El Paso)
Aleti, Kalyan Reddy (Department of Industrial, Manufacturing and Systems Engineering, The University of Texas at El Paso) Hu, Zhonghua (Department of Industrial, Manufacturing and Systems Engineering, The University of Texas at El Paso) Kwon, Yongjin (James) (Department of Industrial Engineering, Ajou University) |
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