首页> 外文期刊>International Journal of Productivity and Quality Management >The Bias in Two-Pass Regression Tests of Asset-Pricing Models in Presence of Idiosyncratic Errors with Cross-Sectional Dependence_
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The Bias in Two-Pass Regression Tests of Asset-Pricing Models in Presence of Idiosyncratic Errors with Cross-Sectional Dependence_

机译:存在跨部门特质误差的资产定价模型两遍回归检验的偏差_

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摘要

In two-pass regression-tests of asset-pricing models, cross-sectional correlations in the errors of the first-pass time-series regression lead to correlated measurement errors in the betas used as explanatory variables in the second-pass cross-sectional regression. The slope estimator of the second-pass regression is an estimate for the factor risk-premium and its significance is decisive for the validity of the pricing model. While it is well known that the slope estimator is downward biased in presence of uncorrelated measurement errors, we show in this paper that the correlations seen in empirical return data substantially suppress this bias. For the case of a single-factor model, we calculate the bias of the OLS slope estimator in the presence of correlated measurement errors with a first-order Taylor-approximation in the size of the errors. We show that the bias increases with the size of the errors, but decreases the more the errors are correlated. We illustrate and validate our result using a simulation approach based on empirical data commonly used in asset-pricing tests.
机译:在资产定价模型的两次通过回归测试中,第一次通过时间序列回归的误差中的横截面相关性会导致beta中相关的测量误差,这些beta会在二次通过横截面回归中用作解释变量。第二遍回归的斜率估计值是风险溢价因素的估计,其重要性对于定价模型的有效性具有决定性作用。众所周知,在存在不相关的测量误差的情况下,斜率估算器会向下偏置,但我们在本文中表明,在经验回报数据中看到的相关性基本上可以抑制这种偏置。对于单因素模型,我们在存在相关测量误差且误差大小为一阶泰勒近似的情况下,计算OLS斜率估计器的偏差。我们表明,偏差随着误差的大小而增加,但与误差相关的程度越小,偏差越小。我们使用基于资产定价测试中常用经验数据的模拟方法来说明和验证我们的结果。

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