夏普比率
计量经济学
文件夹
峰度
信息率
偏斜
计算机科学
统计
概率逻辑
统计的
现代投资组合理论
数学
经济
金融经济学
作者
David H. Bailey,Marcos López de Prado
标识
DOI:10.21314/jor.2012.255
摘要
We evaluate the probability that an estimated Sharpe ratio will exceed a given threshold in the presence of nonnormal returns. We show that this new uncertainty-adjusted investment skill metric (called the probabilistic Sharpe ratio) has a number of important applications. First, it allows us to establish the track-record length needed for rejecting the hypothesis that a measured Sharpe ratio is below a certain threshold with a given confidence level. Second, it models the trade-off between track-record length and undesirable statistical features (eg, negative skewness with positive excess kurtosis). Third, it explains why track records with those undesirable traits would benefit from reporting performance with the highest sampling frequency such that the independent and identically distributed assumption is not violated. Fourth, it permits the computation of what we call the Sharpe ratio efficient frontier, which lets us optimize a portfolio under nonnormal, leveraged returns while incorporating the uncertainty derived from track-record length. Results can be validated using the Python code in the appendixes.
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