Horses for Courses: Mean-Variance for Asset Allocation and 1/N for Stock Selection

Emmanouil Platanakis, C. Sutcliffe, Xiaoxia Ye
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引用次数: 27

Abstract

For various organizational reasons, large investors typically split their portfolio decision into two stages - asset allocation and stock selection. We hypothesise that mean-variance models are superior to equal weighting for asset allocation, while the reverse applies for stock selection, as estimation errors are less of a problem for mean-variance models when used for asset allocation than for stock selection. We confirm this hypothesis for US data using Bayes-Stein with no short sales and variance based constraints. Robustness checks with four other types of mean-variance model (Black-Litterman with three different reference portfolios, minimum variance, Bayes diffuse prior and Markowitz), and a wide range of parameter settings support our conclusions. We also replicate our core results using Japanese data, with additional replications using the Fama-French 5, 10, 12 and 17 industry portfolios and equities from seven countries. In contrast to previous results, but consistent with our empirical results, we show analytically that the superiority of mean-variance over 1/N is increased when the assets have a lower cross-sectional idiosyncratic volatility, which we also confirm in a simulation analysis calibrated to US data.
课程中的马匹:资产配置的均值-方差和选股的1/N
由于各种组织原因,大型投资者通常将他们的投资组合决策分为两个阶段——资产配置和股票选择。我们假设均值-方差模型在资产配置方面优于等权重模型,而在股票选择方面则相反,因为与股票选择相比,用于资产配置的均值-方差模型的估计误差更小。我们使用没有卖空和基于方差的约束的贝叶斯-斯坦来确认美国数据的这一假设。使用其他四种类型的均值-方差模型(具有三种不同参考组合的Black-Litterman模型、最小方差模型、贝叶斯扩散先验模型和马科维茨模型)进行稳健性检查,以及广泛的参数设置支持我们的结论。我们还使用日本数据复制了我们的核心结果,并使用Fama-French 5、10、12和17个行业组合以及来自7个国家的股票进行了额外的复制。与之前的结果相反,但与我们的实证结果一致,我们分析地表明,当资产具有较低的横截面特质波动率时,均值方差优于1/N的优势增加,我们也在校准到美国数据的模拟分析中证实了这一点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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