通过基于矩的边界近似计算的有效投资组合:第一部分- EB

S. Dokov, I. Popova, D. Morton
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引用次数: 0

摘要

我们开发和分析均值方差有效的投资组合。每个投资组合都是一个优化问题的解,它近似于效用函数的期望值。近似值是效用函数期望值的上界。该边界是基于投资组合随机收益的前两个概率矩和交叉矩。我们证明了近似优化问题的最优解产生均值方差有效投资组合。我们通过设计在纽约证券交易所(NYSE)交易的股票的每日交易策略来说明如何在实践中使用所得投资组合。近似优化模型每天求解一次。样本外数值结果给出了27年的每日交易的24只股票从纽约证券交易所。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Portfolios Computed via Moment-Based Bounding-approximations: Part I - EB
We develop and analyze mean-variance efficient portfolios. Each portfolio comes as a solution of an optimization problem, which approximates the expected value of a utility function. The approximation is an upper bound on the expected value of the utility function. The bound is based on the first two probability moments and cross-moments of the portfolio”s random return. We prove that the optimal solution of the approximate optimization problem yields a mean-variance efficient portfolio. We illustrate how to use the resulting portfolio in practice by designing a daily trading strategy with stocks traded on the New York Stock Exchange (NYSE). The approximate optimization model is solved once every day. Out-of-sample numerical results are presented for 27 years of daily trading for 24 stocks from NYSE.
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