Title of article :
Clustering Stocks with Self-organizing Maps: An application on Stocks Listed in BIST50 Index
Author/Authors :
Özçalıcı, Mehmet Kilis 7 Aralik Üniversitesi - iktisadi ve idari Bilimler Fakültesi, Türkiye
Abstract :
The determination of characteristics of stocks are essential for an efficient portfolio management.In a well-diversified portfolio, the risk will be minimum. It is essential to know the characteristicsof stocks for a better diversification. In this study, the stocks listed in BIST50 index are clusteredusing their standardized mean return and standard deviation of return. Closing price along 708trading session is retrieved from Borsa Istanbul Datastore Department. For each stock, the lastobservation belongs to second trading session of 30/06/2015. Self-organizing maps which is aspecial kind of artificial neural networks are used as clustering technique. Also similarity matrix,scatter diagram, silhouette plots and time series plots for the selected stocks are drawn. Resultsindicate that self-organizing maps are successful at clustering and visualizing the stocks.
Keywords :
Self , organizing Maps Common Stocks Portfolio Management Similarity Matrix Silhouette Graphics
Journal title :
Istanbul Business Research (IBR)
Journal title :
Istanbul Business Research (IBR)