Article ID Journal Published Year Pages File Type
387666 Expert Systems with Applications 2012 9 Pages PDF
Abstract

Traditional mean–variance financial portfolio optimization is based on two sets of parameters, estimates for the asset returns and the variance–covariance matrix. The allocations resulting from both traditional methods and heuristics are very dependent on these values. Given the unreliability of these forecasts, the expected risk and return for the portfolios in the efficient frontier often differ from the expected ones. In this work we present a resampling method based on time-stamping to control the problem. The approach, which is compatible with different evolutionary multiobjective algorithms, is tested with four different alternatives. We also introduce new metrics to assess the reliability of forecast efficient frontiers.

► We have tackled the problem of achieving robust or stable portfolios. ► We have proposed an evolutionary approach for robust optimization based on a time-stamped mechanism. ► We have tested different multiobjective evolutionary algorithms to aboard the problem.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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