Forecasting the output of Taiwan's integrated circuit (IC) industry using empirical mode decomposition and support vector machines

1 Department of Industrial Engineering and Management, China University of Science and Technology, No.245, Sec. 3, Academia Rd., Nangang Dist., Taipei City, Taiwan 115, R.O.C. 2 Department of Business Administration, National Taipei College of Business, No.321, Sec. 1, Ji-Nan Rd., Zhongzheng District, Taipei City, Taiwan 10051, R.O.C. 3 Department of Business Administration, Soochow University, No.56. Kueiyang Street, Section 1, Taipei, Taiwan 100, R.O.C.

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