Robust portfolio optimization with a hybrid heuristic algorithm

Robust portfolio optimization with a hybrid heuristic algorithm

0.00 Avg rating0 Votes
Article ID: iaor2012153
Volume: 9
Issue: 1
Start Page Number: 63
End Page Number: 88
Publication Date: Feb 2012
Journal: Computational Management Science
Authors: ,
Keywords: heuristics, matrices, optimization
Abstract:

Estimation errors in both the expected returns and the covariance matrix hamper the construction of reliable portfolios within the Markowitz framework. Robust techniques that incorporate the uncertainty about the unknown parameters are suggested in the literature. We propose a modification as well as an extension of such a technique and compare both with another robust approach. In order to eliminate oversimplifications of Markowitz’ portfolio theory, we generalize the optimization framework to better emulate a more realistic investment environment. Because the adjusted optimization problem is no longer solvable with standard algorithms, we employ a hybrid heuristic to tackle this problem. Our empirical analysis is conducted with a moving time window for returns of the German stock index DAX100. The results of all three robust approaches yield more stable portfolio compositions than those of the original Markowitz framework. Moreover, the out‐of‐sample risk of the robust approaches is lower and less volatile while their returns are not necessarily smaller.

Reviews

Required fields are marked *. Your email address will not be published.