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Estimating cross-sectional regressions in event studies with conditional heteroskedasticity and regression designs that have leverage

Imre Karafiath (Finance, Insurance, Real Estate, and Business Law, University of North Texas, Denton, Texas, USA)

International Journal of Managerial Finance

ISSN: 1743-9132

Article publication date: 26 August 2014

1455

Abstract

Purpose

In the finance literature, fitting a cross-sectional regression with (estimated) abnormal returns as the dependent variable and firm-specific variables (e.g. financial ratios) as independent variables has become de rigueur for a publishable event study. In the absence of skewness and/or kurtosis the explanatory variable, the regression design does not exhibit leverage – an issue that has been addressed in the econometrics literature on the finite sample properties of heteroskedastic-consistent (HC) standard errors, but not in the finance literature on event studies. The paper aims to discuss this issue.

Design/methodology/approach

In this paper, simulations are designed to evaluate the potential bias in the standard error of the regression coefficient when the regression design includes “points of high leverage” (Chesher and Jewitt, 1987) and heteroskedasticity. The empirical distributions of test statistics are tabulated from ordinary least squares, weighted least squares, and HC standard errors.

Findings

None of the test statistics examined in these simulations are uniformly robust with regard to conditional heteroskedasticity when the regression includes “points of high leverage.” In some cases the bias can be quite large: an empirical rejection rate as high as 25 percent for a 5 percent nominal significance level. Further, the bias in OLS HC standard errors may be attenuated but not fully corrected with a “wild bootstrap.”

Research limitations/implications

If the researcher suspects an event-induced increase in return variances, tests for conditional heteroskedasticity should be conducted and the regressor matrix should be evaluated for observations that exhibit a high degree of leverage.

Originality/value

This paper is a modest step toward filling a gap on the finite sample properties of HC standard errors in the event methodology literature.

Keywords

Acknowledgements

The author thanks the Reviewer and Editor for their valuable comments. Any remaining errors are entirely the author's own.

Citation

Karafiath, I. (2014), "Estimating cross-sectional regressions in event studies with conditional heteroskedasticity and regression designs that have leverage", International Journal of Managerial Finance, Vol. 10 No. 4, pp. 418-431. https://doi.org/10.1108/IJMF-12-2012-0134

Publisher

:

Emerald Group Publishing Limited

Copyright © 2014, Emerald Group Publishing Limited

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