Robust Statistics for Portfolio Construction and Analysis

IF 1.1 4区 经济学 Q3 BUSINESS, FINANCE
R. Martin, Stoyan Stoyanov, Kirk Li, M. Shammaa
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引用次数: 0

Abstract

Asset returns and factor exposures frequently exhibit small fractions of extreme outliers, which are often associated with fat-tailed distributions and can have very adverse influence on classical least-squares regression estimators and sample covariance matrices. Over a number of decades, a solid theoretical and computational foundation has been developed for alternative robust estimators that are not much influenced by outliers. Unfortunately, such methods have seen relatively little use in portfolio construction and analysis. An overarching goal of this article is to encourage the use of robust statistics by portfolio managers and analysts, minimally as a complement to classical estimators and in some cases as a replacement. In support of this goal, the authors briefly describe the main data and theoretical foundations of robust statistics, then introduce a best-of-breed robust regression estimator with applications to cross-sectional and time-series factor model data. They go on to describe a highly robust covariance matrix estimator and the closely related robust multidimensional distance measure for outlier detection and shrinkage, applied to stock return and factor exposure data with influential outliers. A unique aspect of the robust estimators and most of the data used in this article is that they are freely available in several open source R packages. Consequently, most of the exhibits are reproducible with R code that may be found at: https://github.com/robustport/PCRA/blob/main/README.md.
投资组合构建与分析的稳健统计
资产回报和因素暴露经常表现出极端异常值的一小部分,这些异常值通常与肥尾分布相关,并且可能对经典的最小二乘回归估计和样本协方差矩阵产生非常不利的影响。几十年来,已经为不受离群值影响的鲁棒估计器建立了坚实的理论和计算基础。不幸的是,这些方法在投资组合构建和分析中很少使用。本文的首要目标是鼓励投资组合经理和分析师使用健壮的统计数据,至少作为经典估算器的补充,在某些情况下作为替代。为了实现这一目标,作者简要描述了稳健统计的主要数据和理论基础,然后介绍了一种最佳的稳健回归估计器,并应用于横截面和时间序列因子模型数据。他们接着描述了一个高度稳健的协方差矩阵估计器和密切相关的稳健多维距离测量,用于异常值检测和收缩,应用于具有影响异常值的股票收益和因素暴露数据。健壮估计器和本文中使用的大多数数据的一个独特之处在于,它们可以在几个开源R包中免费获得。因此,大多数展品都可以用R代码重现,可以在https://github.com/robustport/PCRA/blob/main/README.md上找到。
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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来源期刊
Journal of Portfolio Management
Journal of Portfolio Management Economics, Econometrics and Finance-Finance
CiteScore
2.20
自引率
28.60%
发文量
113
期刊介绍: Founded by Peter Bernstein in 1974, The Journal of Portfolio Management (JPM) is the definitive source of thought-provoking analysis and practical techniques in institutional investing. It offers cutting-edge research on asset allocation, performance measurement, market trends, risk management, portfolio optimization, and more. Each quarterly issue of JPM features articles by the most renowned researchers and practitioners—including Nobel laureates—whose works define modern portfolio theory.
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