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A GENETIC ALGORITHM APPROACH FOR THE BEST SUBSET SELECTION IN LINEAR REGRESSION

Yıl 2003, Cilt: 16 Sayı: 1, 37 - 45, 09.08.2010

Öz

When a data set including many explanatory variables and a response variable is given, the choice of best model which predicts the response variable is known as "variable selection" or "the selection of the best subset model". Many methods for variable selection have been suggested. Unfortunately, when the correlation between explanatory variables is high, currently used methods are mostly unsuccesful. Also, as the number of possible subsets grows exponentially when the number of explanatory variables increase, all possible subset methods have difficulty handling large dimensional data sets. In this study, a new stochastic optimization method based on Genetic Algorithm (GA) is proposed for variable selection in linear regression. The performance of the method proposed and that of classical variable selection methods are compared by using data sets commonly given in literature.

 Key Words: Linear regression, variable selection, stochastic optimization, genetic algorithm.

 

Yıl 2003, Cilt: 16 Sayı: 1, 37 - 45, 09.08.2010

Öz

Toplam 0 adet kaynakça vardır.

Ayrıntılar

Birincil Dil İngilizce
Bölüm Statistics
Yazarlar

Özgür Yeniay Bu kişi benim

Atilla Göktaş Bu kişi benim

Yayımlanma Tarihi 9 Ağustos 2010
Yayımlandığı Sayı Yıl 2003 Cilt: 16 Sayı: 1

Kaynak Göster

APA Yeniay, Ö., & Göktaş, A. (2010). A GENETIC ALGORITHM APPROACH FOR THE BEST SUBSET SELECTION IN LINEAR REGRESSION. Gazi University Journal of Science, 16(1), 37-45.
AMA Yeniay Ö, Göktaş A. A GENETIC ALGORITHM APPROACH FOR THE BEST SUBSET SELECTION IN LINEAR REGRESSION. Gazi University Journal of Science. Ağustos 2010;16(1):37-45.
Chicago Yeniay, Özgür, ve Atilla Göktaş. “A GENETIC ALGORITHM APPROACH FOR THE BEST SUBSET SELECTION IN LINEAR REGRESSION”. Gazi University Journal of Science 16, sy. 1 (Ağustos 2010): 37-45.
EndNote Yeniay Ö, Göktaş A (01 Ağustos 2010) A GENETIC ALGORITHM APPROACH FOR THE BEST SUBSET SELECTION IN LINEAR REGRESSION. Gazi University Journal of Science 16 1 37–45.
IEEE Ö. Yeniay ve A. Göktaş, “A GENETIC ALGORITHM APPROACH FOR THE BEST SUBSET SELECTION IN LINEAR REGRESSION”, Gazi University Journal of Science, c. 16, sy. 1, ss. 37–45, 2010.
ISNAD Yeniay, Özgür - Göktaş, Atilla. “A GENETIC ALGORITHM APPROACH FOR THE BEST SUBSET SELECTION IN LINEAR REGRESSION”. Gazi University Journal of Science 16/1 (Ağustos 2010), 37-45.
JAMA Yeniay Ö, Göktaş A. A GENETIC ALGORITHM APPROACH FOR THE BEST SUBSET SELECTION IN LINEAR REGRESSION. Gazi University Journal of Science. 2010;16:37–45.
MLA Yeniay, Özgür ve Atilla Göktaş. “A GENETIC ALGORITHM APPROACH FOR THE BEST SUBSET SELECTION IN LINEAR REGRESSION”. Gazi University Journal of Science, c. 16, sy. 1, 2010, ss. 37-45.
Vancouver Yeniay Ö, Göktaş A. A GENETIC ALGORITHM APPROACH FOR THE BEST SUBSET SELECTION IN LINEAR REGRESSION. Gazi University Journal of Science. 2010;16(1):37-45.