Support Vector Regression Parameters Optimization using Golden Sine Algorithm and Its Application in Stock Market
Subject Areas : Financial Econometrics
Mohammadreza Ghanbari
1
,
Mahdi Goldani
2
1 - Department of Mathematical Sciences, Sharif University of Technology, Tehran, Iran
2 - Department of Economics, Hakim Sabzevari university, Sabzevar 9617976487, Iran
Keywords:
Abstract :
References
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