Measurement of Factor Strenght: Theory and Practice

Natalia Bailey, G. Kapetanios, M. Pesaran
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引用次数: 5

Abstract

This paper proposes an estimator of factor strength and establishes its consistency and asymptotic distribution. The proposed estimator is based on the number of statistically significant factor loadings, taking account of the multiple testing problem. We focus on the case where the factors are observed which is of primary interest in many applications in macroeconomics and finance. We also consider using cross section averages as a proxy in the case of unobserved common factors. We face a fundamental factor identification issue when there are more than one unobserved common factors. We investigate the small sample properties of the proposed estimator by means of Monte Carlo experiments under a variety of scenarios. In general, we find that the estimator, and the associated inference, perform well. The test is conservative under the null hypothesis, but, nevertheless, has excellent power properties, especially when the factor strength is sufficiently high. Application of the proposed estimation strategy to factor models of asset returns shows that out of 146 factors recently considered in the finance literature, only the market factor is truly strong, while all other factors are at best semi-strong, with their strength varying considerably over time. Similarly, we only find evidence of semi-strong factors in an updated version of the Stock and Watson (2012) macroeconomic dataset.
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因子强度的测量:理论与实践
提出了因子强度的一个估计量,并建立了其相合性和渐近分布。所提出的估计器基于统计上显著的因子负载的数量,并考虑了多重测试问题。我们专注于观察因素的情况,这在宏观经济学和金融学的许多应用中是主要的兴趣。我们还考虑在未观察到的共同因素的情况下使用横截面平均值作为代理。当存在不止一个未观察到的共同因素时,我们面临一个基本因素识别问题。我们通过蒙特卡罗实验研究了该估计器在各种情况下的小样本性质。总的来说,我们发现估计器和相关的推理都表现得很好。在零假设下,该检验是保守的,但是,尽管如此,具有优异的功率特性,特别是当因子强度足够高时。将提出的估计策略应用于资产回报的因子模型表明,在最近金融文献中考虑的146个因子中,只有市场因子是真正强大的,而所有其他因子最多是半强大的,它们的强度随时间变化很大。同样,我们只在Stock和Watson(2012)宏观经济数据集的更新版本中发现了半强因素的证据。
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