NewEvery arXiv paper, its researchers & institutions — mapped.
paper

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

arXiv:1109.5316 · doi:10.1007/s00780-013-0213-8

Abstract

We study the portfolio problem of maximizing the outperformance probability over a random benchmark through dynamic trading with a fixed 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.

34 pages, 3 figures