International Journal of Finance & Banking Studies

International Journal of Finance & Banking Studies

Random Regression Forest Model using Technical Analysis Variables: An application on Turkish Banking Sector in Borsa Istanbul (BIST)

Yazarlar: Senol Emir, Hasan Dincer, Umit Hacioglu, Serhat Yuksel

Cilt 5 , Sayı 3 , 2016 , Sayfalar -

Konular:

Anahtar Kelimeler:Random Forest Regression Artificial Neural Networks Technical Analysis Banking Sector Variable Importance

Özet: The purpose of this study is to explore the importance and ranking of technical analysis variables in Turkish banking sector. Random Forest method is used for determining importance scores of inputs for eight banks in Borsa Istanbul. Then two predictive models utilizing Random Forest (RF) and Artificial Neural Networks (ANN) are built for predicting BIST-100 index and bank closing prices. Results of the models are compared by three metrics namely Mean Absolute Error (MAE), Mean Square Error (MSE), Median Absolute Error (MedAE). Findings show that moving average (MAV-100) is the most important variable for both BIST -100 index and bank closing prices. Therefore, investors should follow this technical indicator with respect to Turkish banks. In addition ANN shows better performance for all metrics.


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BibTex
KOPYALA
@article{2016, title={Random Regression Forest Model using Technical Analysis Variables: An application on Turkish Banking Sector in Borsa Istanbul (BIST)}, volume={5}, number={0}, publisher={International Journal of Finance & Banking Studies}, author={Senol Emir, Hasan Dincer, Umit Hacioglu, Serhat Yuksel}, year={2016} }
APA
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Senol Emir, Hasan Dincer, Umit Hacioglu, Serhat Yuksel. (2016). Random Regression Forest Model using Technical Analysis Variables: An application on Turkish Banking Sector in Borsa Istanbul (BIST) (Vol. 5). Vol. 5. International Journal of Finance & Banking Studies.
MLA
KOPYALA
Senol Emir, Hasan Dincer, Umit Hacioglu, Serhat Yuksel. Random Regression Forest Model Using Technical Analysis Variables: An Application on Turkish Banking Sector in Borsa Istanbul (BIST). no. 0, International Journal of Finance & Banking Studies, 2016.