实证回报因子模型的不规范及因子分析扩充作为因子遗漏的解决方案

Q4 Economics, Econometrics and Finance Journal for Studies in Economics and Econometrics Pub Date : 2019-04-30 DOI:10.1080/10800379.2020.12097365
J. Szczygielski, Leon Brummer, Hendrik Wolmarans
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引用次数: 8

摘要

这篇实证论文全面阐述了规范不足对实证金融学中一个关键的基本概念——线性因子模型的影响。它强调因素遗漏对模型估计和解释的广泛后果。将资产回报与预先指定的因素集联系起来的时间序列模型中的因素遗漏是一个常见问题。一个被提议的标准和广泛使用的解决方案是包含一个剩余的市场因素,它被认为是遗漏因素的一个包罗万象的代理。这项研究表明,包含一组精心挑选的宏观经济因素的规范将是不充分的。纳入剩余市场因素将减轻但不能消除规格不足的后果。尽管在因子模型中早期使用因子分析衍生的因子得分受到了批评,但用残差衍生的统计因子来增加一个包含预先指定因素的模型,结果是一个准确指定的模型,对角性假设成立。因此,本文证明了因子解析增广是解决因子遗漏问题的一种有效且易于实现的方法。
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Underspecification of the Empirical Return-Factor Model and a Factor Analytic Augmentation as a Solution to Factor Omission
This empirical paper comprehensively sets out the impact of underspecification on a key foundational concept in empirical finance, the linear factor model. It places emphasis on the extensive consequences of factor omission for model estimation and interpretation. Factor omission in time-series models that relate asset returns to pre-specified factor sets is a common problem. A proposed standard and widely-used solution is the inclusion of a residual market factor which is assumed to be a catch-all proxy for omitted factors. This study shows that a specification that incorporates a set of carefully selected macroeconomic factors will be underspecified. The inclusion of residual market factors will alleviate but not eliminate the consequences of underspecification. Although the early use of factor analytically derived factor scores in factor models has been criticized, augmenting a model comprising pre-specified factors with statistical factors derived from the residuals results in an accurately specified model for which the diagonality assumption holds. Consequently, this paper shows that a factor analytic augmentation is an effective and readily implementable solution to the factor omission problem.
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来源期刊
Journal for Studies in Economics and Econometrics
Journal for Studies in Economics and Econometrics Economics, Econometrics and Finance-Economics and Econometrics
CiteScore
0.80
自引率
0.00%
发文量
14
期刊介绍: Published by the Bureau for Economic Research and the Graduate School of Business, University of Stellenbosch. Articles in the field of study of Economics (in the widest sense of the word).
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