Efficient Bias Robust Cross Section Factor Models

R. Martin, Daniel Z. Xia
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引用次数: 1

Abstract

This paper introduces a theory based robust regression estimator, called the mOpt estimator, that minimizes the maximum bias with respect to a Tukey-Huber mixture model that includes a standard linear regression model with normally distribution errors as a special case, but also allows for a small fraction of unrestricted fat-tailed and skewed non-normal distribution variations from the standard model. The estimator has a very intuitive weighted least squares interpretation based on a data-dependent weight function that is equal to zero for robustly scaled prediction residuals that are larger in magnitude than 3.0, and thereby rejects outliers. We apply the robust regression method to single factor and multiple factor cross-section models for Size, BM, Beta and EP factors, and find that the robust regression results reverse the Fama-French 1992 (FF92) conclusions concerning the significance of the Size, Beta and EP factors. The difference in our results and those of FF92 is that the robust regression rejects approximately 4% to 5% of outliers, most of which, but not all, occur for microcap stocks, with smallcap stocks also having some influential outliers, and even largecaps have a few. We strongly recommend standard use of the mOpt estimator as an important complement to least squares for empirical asset pricing research, as well as for quantitative finance applications in general.
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高效偏置鲁棒截面因子模型
本文介绍了一种基于理论的鲁棒回归估计器,称为mOpt估计器,它最小化了Tukey-Huber混合模型的最大偏差,该模型包括一个标准线性回归模型,作为一种特殊情况,具有正态分布误差,但也允许一小部分不受限制的肥尾和偏斜的非正态分布变化来自标准模型。估计器具有非常直观的加权最小二乘解释,该解释基于数据相关的权重函数,对于大于3.0的稳健缩放预测残差,该权重函数等于零,从而拒绝异常值。我们将稳健回归方法应用于Size、BM、Beta和EP因子的单因素和多因素截面模型,发现稳健回归结果与Fama-French 1992 (FF92)关于Size、Beta和EP因子显著性的结论相反。我们的结果与FF92的结果的不同之处在于,稳健回归拒绝了大约4%至5%的异常值,其中大部分(但不是全部)发生在小盘股上,小盘股也有一些有影响力的异常值,甚至大盘股也有一些。我们强烈建议标准使用mOpt估计器,作为经验资产定价研究以及一般定量金融应用的最小二乘的重要补充。
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