多元化(营销策略)
节拍(声学)
业务
计算机科学
营销
物理
声学
标识
DOI:10.1017/s0022109023001175
摘要
Abstract We show theoretically that the usual estimated investment strategies will not achieve the optimal Sharpe ratio when the dimensionality is high relative to sample size, and the $ 1/N $ rule is optimal in a 1-factor model with diversifiable risks as dimensionality increases, which explains why it is difficult to beat the $ 1/N $ rule in practice. We also explore conditions under which it can be beaten, and find that we can outperform it by combining it with the estimated rules when $ N $ is small, and by combining it with anomalies or machine learning portfolios, conditional on the profitability of the latter, when $ N $ is large.
科研通智能强力驱动
Strongly Powered by AbleSci AI