测试资产和薄弱因素

Stefano Giglio, D. Xiu, Dake Zhang
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引用次数: 24

摘要

资产定价中因子模型的估计和检验需要选择一组测试资产。测试资产的选择决定了识别不同因素风险溢价的程度:如果只有少数资产暴露于一个因素,那么该因素是弱的,这使得标准估计和推断不正确。换句话说,一个因素的强度不是该因素的固有属性:它是分析中使用的截面的属性。我们提出了一种新的方法来从一系列测试资产中选择资产,并估计利息因子的风险溢价,以及整个随机贴现因子,该方法明确地说明了弱因素和具有高度相关风险暴露的测试资产。我们将我们的方法称为监督主成分分析(SPCA),因为它迭代了一个资产选择步骤和一个主成分估计步骤。我们提供了我们的估计量的渐近性质,并将其极限行为与最近文献中提出的替代估计量进行了比较,这些估计量依赖于PCA, Ridge, Lasso和偏最小二乘(PLS)。我们发现在弱因子存在的情况下SPCA在理论上和有限样本情况下都是优越的。我们通过使用SPCA来估计几种可交易和不可交易要素的风险溢价来说明SPCA的使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Test Assets and Weak Factors
Estimation and testing of factor models in asset pricing requires choosing a set of test assets. The choice of test assets determines how well different factor risk premia can be identified: if only few assets are exposed to a factor, that factor is weak, which makes standard estimation and inference incorrect. In other words, the strength of a factor is not an inherent property of the factor: it is a property of the cross-section used in the analysis. We propose a novel way to select assets from a universe of test assets and estimate the risk premium of a factor of interest, as well as the entire stochastic discount factor, that explicitly accounts for weak factors and test assets with highly correlated risk exposures. We refer to our methodology as supervised principal component analysis (SPCA), because it iterates an asset selection step and a principal-component estimation step. We provide the asymptotic properties of our estimator, and compare its limiting behavior with that of alternative estimators proposed in the recent literature, which rely on PCA, Ridge, Lasso, and Partial Least Squares (PLS). We find that the SPCA is superior in the presence of weak factors, both in theory and in finite samples. We illustrate the use of SPCA by using it to estimate the risk premia of several tradable and nontradable factors.
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