夏普比率与学生t统计量的关联及其他

E. Benhamou
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引用次数: 6

摘要

夏普比率在资产管理中被广泛用于比较和基准基金和资产管理公司。它计算超额收益与策略标准差之比。然而,计算夏普比率的要素,即预期收益和波动率是未知数,需要进行统计估计。这意味着,由于统计估计误差,基金使用的夏普比率容易出错。Lo (2002), Mertens(2002)在几组假设(独立正态分布和同分布收益)下,使用标准渐近理论推导出夏普比率统计分布的显式表达式。本文给出了独立正态分布收益率的夏普比率的精确分布。在这种情况下,夏普比率统计是一个非中心的学生分布,其特征已被统计学家广泛研究的一个重新缩放因子。我们的分布的渐近行为提供了Lo(2002)的结果。我们还说明了经验夏普比率在达到Cramer Rao界的意义上是渐近最优的事实。然后,我们研究了AR(1)假设下的经验SR,并研究了复利期对夏普的影响(例如,用月度数据计算年度夏普)。最后给出了异方差和自相关情况下的一般公式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Connecting Sharpe Ratio and Student T-Statistic, and Beyond
Sharpe ratio is widely used in asset management to compare and benchmark funds and asset managers. It computes the ratio of the excess return over the strategy standard deviation. However, the elements to compute the Sharpe ratio, namely, the expected returns and the volatilities are unknown numbers and need to be estimated statistically. This means that the Sharpe ratio used by funds is subject to be error prone because of statistical estimation error. Lo (2002), Mertens (2002) derive explicit expressions for the statistical distribution of the Sharpe ratio using standard asymptotic theory under several sets of assumptions (independent normally distributed - and identically distributed returns). In this paper, we provide the exact distribution of the Sharpe ratio for independent normally distributed return. In this case, the Sharpe ratio statistic is up to a rescaling factor a non centered Student distribution whose characteristics have been widely studied by statisticians. The asymptotic behavior of our distribution provide the result of Lo (2002). We also illustrate the fact that the empirical Sharpe ratio is asymptotically optimal in the sense that it achieves the Cramer Rao bound. We then study the empirical SR under AR(1) assumptions and investigate the effect of compounding period on the Sharpe (computing the annual Sharpe with monthly data for instance). We finally provide general formula in this case of heteroscedasticity and autocorrelation.
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