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Outperformance Portfolio Optimization via the Equivalence of Pure and Randomized Hypothesis Testing

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posted on 2016-03-31, 00:00 authored by Tim Leung, Qingshuo Song, Jie Yang
We study the portfolio optimization problem of maximizing the outperformance probability over a random benchmark through dynamic trading with a xed initial capital. Under a general incomplete market framework, this stochastic control problem can be formulated as a composite pure hypothesis testing problem. We analyze the connection between this pure testing problem and its randomized counterpart, and from latter we derive a dual representation for the maximal outperformance probability. Moreover, in a complete market setting, we provide a closed-form solution to the problem of beating a leveraged exchange traded fund. For a general benchmark under an incomplete stochastic factor model, we provide the Hamilton-Jacobi-Bellman PDE characterization for the maximal outperformance probability.

Funding

The authors would like to thank two anonymous referees for their insightful remarks, as well as Jun Sekine, Birgit Rudlo and James Martin for their helpful discussions.

History

Publisher

Springer Verlag

Language

  • en_US

issn

0949-2984

Issue date

2013-08-27

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