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Portfolio optimization using local linear regression ensembles in RapidMiner

Authors :
Nagy, Gabor
Barta, Gergo
Henk, Tamas
Publication Year :
2015

Abstract

In this paper we implement a Local Linear Regression Ensemble Committee (LOLREC) to predict 1-day-ahead returns of 453 assets form the S&P500. The estimates and the historical returns of the committees are used to compute the weights of the portfolio from the 453 stock. The proposed method outperforms benchmark portfolio selection strategies that optimize the growth rate of the capital. We investigate the effect of algorithm parameter m: the number of selected stocks on achieved average annual yields. Results suggest the algorithm's practical usefulness in everyday trading.<br />Comment: RCOMM 2012: Rapidminer Community Meeting and Conference

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1506.08690
Document Type :
Working Paper