Estimation and inference in low frequency factor model regressions with overlapping observations

IF 2.1 2区 经济学 Q2 BUSINESS, FINANCE Journal of Empirical Finance Pub Date : 2024-08-23 DOI:10.1016/j.jempfin.2024.101536
Asad Dossani
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Abstract

A low frequency factor model regression uses changes or returns computed at a lower frequency than data available. Using overlapping observations to estimate low frequency factor model regressions results in more efficient estimates of OLS coefficients and standard errors, relative to using independent observations or high frequency estimates. I derive the relevant inference and propose a new method to correct for the induced autocorrelation. I present a series of simulations and empirical examples to support the theoretical results. In tests of asset pricing models, using overlapping observations results in lower pricing errors, compared to existing alternatives.

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有重叠观测数据的低频因子模型回归估计和推论
低频因子模型回归使用的是比现有数据更低频率计算的变化或回报。与使用独立观测值或高频率估计值相比,使用重叠观测值估计低频因子模型回归结果,能更有效地估计 OLS 系数和标准误差。我推导出了相关推论,并提出了一种修正诱导自相关性的新方法。我提出了一系列模拟和经验实例来支持理论结果。在对资产定价模型的测试中,与现有的替代方法相比,使用重叠观测结果可降低定价误差。
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来源期刊
CiteScore
3.40
自引率
3.80%
发文量
59
期刊介绍: The Journal of Empirical Finance is a financial economics journal whose aim is to publish high quality articles in empirical finance. Empirical finance is interpreted broadly to include any type of empirical work in financial economics, financial econometrics, and also theoretical work with clear empirical implications, even when there is no empirical analysis. The Journal welcomes articles in all fields of finance, such as asset pricing, corporate finance, financial econometrics, banking, international finance, microstructure, behavioural finance, etc. The Editorial Team is willing to take risks on innovative research, controversial papers, and unusual approaches. We are also particularly interested in work produced by young scholars. The composition of the editorial board reflects such goals.
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