Article ID Journal Published Year Pages File Type
958293 Journal of Empirical Finance 2011 19 Pages PDF
Abstract

Because stock prices are not normally distributed, the power of nonparametric rank tests dominate parametric tests in event study analyses of abnormal returns on a single day. However, problems arise in the application of nonparametric tests to multiple day analyses of cumulative abnormal returns (CARs) that have caused researchers to normally rely upon parametric tests. In an effort to overcome this shortfall, this paper proposes a generalized rank (GRANK) testing procedure that can be used on both single day and cumulative abnormal returns. Asymptotic distributions of the associated test statistics are derived, and their empirical properties are studied with simulations of CRSP returns. The results show that the proposed GRANK procedure outperforms previous rank tests of CARs and is robust to abnormal return serial correlation and event-induced volatility. Moreover, the GRANK procedure exhibits superior empirical power relative to popular parametric tests.

► This paper proposes new nonparametric tests for event study analyses. ► The new rank tests overcome problems with previous nonparametric tests of CARs. ► The proposed test statistics are robust to a variety of event study conditions. ► The new tests offer superior power relative to popular parametric tests. ► We conclude that nonparametric tests should be preferred to parametric tests.

Related Topics
Social Sciences and Humanities Economics, Econometrics and Finance Economics and Econometrics
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