所属栏目:资本市场/资产定价

Hansen-Jagannathan Distance: Geometry and Exact Distribution
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发布日期:2008年05月03日 上次修订日期:2008年05月03日

摘要

This paper provides an in-depth analysis of the Hansen-Jagannathan (HJ) distance, which is a measure that is widely used for diagnosis of asset pricing models, and also as a tool for model selection. In the mean and standard deviation space of portfolio returns, we provide a geometric interpretation of the HJ-distance. In relation to the traditional regression approach of testing asset pricing models, we show that the HJ-distance is a scaled version of the aggregate pricing errors, and it is closely related to Shanken’s (1985) cross-sectional regression test (CSRT) statistic, with the only major di erence in how the zero-beta rate is estimated. For the statistical properties, we provide the exact distribution of the sample HJ-distance and also a simple numerical procedure for computing its distribution function. In addition, we propose a new test of equality of HJ-distance for two nested models. Simulation evidence shows that the asymptotic distribution for sample HJ-distance is grossly inappropriate for typical number of test assets and time series observations, making the small sample analysis empirically relevant.
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RAYMOND KAN; GUOFU ZHOU Hansen-Jagannathan Distance: Geometry and Exact Distribution (2008年05月03日) https://www.cfrn.com.cn/lw/12344.html

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