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Published July 25, 2017 | Published
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Subset Optimization for Asset Allocation

Abstract

Subset optimization provides a new algorithm for asset allocation that's particularly useful in settings with many securities and short return histories. Rather than optimizing weights for all N securities jointly, subset optimization constructs Complete Subset Portfolios (CSPs) that naively aggregate many "Subset Portfolios," each optimizing weights over a subset of only ^N randomly selected securities. With known means and variances, the complete subset efficient frontier for different subset sizes characterizes CSPs' utility loss due to satisficing, which generally decreases with ^N . In finite samples, the bound on CSPs' expected out-of-sample performance loss due to sampling error generally increases with ^N . By balancing this tradeoff, CSPs' expected out-of-sample performance dominates both the 1=N rule and sample-based optimization. Simulation and backtest experiments illustrate CSPs' robust performance against existing asset allocation strategies.

Additional Information

I'm grateful for helpful commentary and suggestions from Yacine Ait-Sahalia, Khai Chiong, John Cochrane, Jaksa Cvitanic, Michael Ewens, Joseph Gerakos, Harry Markowitz, Tatiana Mayskaya, Nicolas Polson, Richard Roll, Alberto Rossi, Allan Timmermann, Ken Whinston, as well as seminar participants at Caltech.

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August 20, 2023
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