Doğuş Üniversitesi Dergisi

Doğuş Üniversitesi Dergisi

The Comparison of Robust Partial Least Squares Regression Methods (RSIMPLS, PRM) with Robust Principal Component Regression for Predicting Tourist Arrivals to Turkey

Yazarlar: Esra Polat

Cilt 20 , Sayı 1 , 2019 , Sayfalar -

Konular:-

Anahtar Kelimeler:Multicollinearity,Outliers,Robust principal component regression,Robust partial least squares regression,Tourist arrivals

Özet: Tourism is one of the most important component in the economic development strategy of many developing countries such as Turkey. The annual data set of Turkey (1986 - 2013), including the six factors affecting the tourist arrivals, is examined. The aim of this study is modelling the tourist arrivals to Turkey in cases of both multicollinearity and outlier existence in the data set by using a robust Principal Component Regression method: RPCR, two robust Partial Least Squares Regression methods: RSIMPLS and Partial Robust M-Regression (PRM). Hence, the best model giving the best predictions of tourist arrivals is selected and the most important factors are determined.


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BibTex
KOPYALA
@article{2019, title={The Comparison of Robust Partial Least Squares Regression Methods (RSIMPLS, PRM) with Robust Principal Component Regression for Predicting Tourist Arrivals to Turkey}, volume={20}, publisher={Doğuş Üniversitesi Dergisi}, author={Esra Polat}, year={2019} }
APA
KOPYALA
Esra Polat. (2019). The Comparison of Robust Partial Least Squares Regression Methods (RSIMPLS, PRM) with Robust Principal Component Regression for Predicting Tourist Arrivals to Turkey (Vol. 20). Vol. 20. Doğuş Üniversitesi Dergisi.
MLA
KOPYALA
Esra Polat. The Comparison of Robust Partial Least Squares Regression Methods (RSIMPLS, PRM) with Robust Principal Component Regression for Predicting Tourist Arrivals to Turkey. no., Doğuş Üniversitesi Dergisi, 2019.