New Approaches to Robust Inference on Market (Non-)efficiency, Volatility Clustering and Nonlinear Dependence

Author:

Ibragimov Rustam1,Pedersen Rasmus Søndergaard2ORCID,Skrobotov Anton3

Affiliation:

1. Imperial College Business School , London, SW7 2AZ, UK

2. Department of Economics, University of Copenhagen , Kobenhavn K, 1353, Denmark

3. Russian Presidential Academy of National Economy and Public Administration (RANEPA), Moscow, 119571, Russian Federation , and Center for Econometrics and Business Analytics, St Petersburg State University, St Petersburg, 199034, Russian Federation

Abstract

Abstract We present novel, robust methods for inference on market (non-)efficiency, volatility clustering, and nonlinear dependence in financial return series. In contrast to existing methodology, our proposed methods are robust against nonlinear dynamics and tail-heaviness of returns. Specifically, our methods only rely on return processes being stationary and weakly dependent (mixing) with finite moments of a suitable order. This includes robustness against power-law distributions associated with nonlinear dynamic models such as GARCH and stochastic volatility. The methods are easy to implement and perform well in realistic settings. We revisit a recent study by Baltussen, van Bekkum, and Da (2019, J. Financ. Econ., 132, 26–48) on autocorrelation in major stock indexes. Using our robust methods, we document that the evidence of the presence of negative autocorrelation is weaker, compared with the conclusions of the original study.

Funder

Russian Science Foundation

RANEPA state assignment research programme

Independent Research Fund Denmark

Publisher

Oxford University Press (OUP)

Subject

Economics and Econometrics,Finance

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