CUSUM-Based Monitoring for Explosive Episodes in Financial Data in the Presence of Time-Varying Volatility

Author:

Astill Sam1,Harvey David I2ORCID,Leybourne Stephen J3,Taylor A M Robert4,Zu Yang5

Affiliation:

1. Essex Business School, University of Essex

2. Granger Centre for Time Series Econometrics and School of Economics, University of Nottingham

3. Granger Centre for Time Series Econometrics and School of Economics, University of Nottingham

4. Essex Business School, University of Essex

5. Granger Centre for Time Series Econometrics and School of Economics, University of Nottingham

Abstract

Abstract We generalize the Homm and Breitung (2012) CUSUM-based procedure for the real-time detection of explosive autoregressive episodes in financial price data to allow for time-varying volatility. Such behavior can heavily inflate the false positive rate (FPR) of the CUSUM-based procedure to spuriously signal the presence of an explosive episode. Our modified procedure involves replacing the standard variance estimate in the CUSUM statistics with a nonparametric kernel-based spot variance estimate. We show that the sequence of modified CUSUM statistics has a joint limiting null distribution which is invariant to any time-varying volatility present in the innovations and that this delivers a real-time monitoring procedure whose theoretical FPR is controlled. Simulations show that the modification is effective in controlling the empirical FPR of the procedure, yet sacrifices only a small amount of power to detect explosive episodes, relative to the standard procedure, when the shocks are homoskedastic. An empirical illustration using Bitcoin price data is provided.

Publisher

Oxford University Press (OUP)

Subject

Economics and Econometrics,Finance

Reference32 articles.

1. Tests for an End-of-Sample Bubble in Financial Time Series;Astill;Econometric Reviews,2017

2. Real-Time Monitoring for Explosive Financial Bubbles;Astill;Journal of Time Series Analysis,2018

3. Unit Root Testing with Unstable Volatility;Beare;Journal of Time Series Analysis,2018

4. Adaptive Wild Bootstrap Testing for a Unit Root with Nonstationary Volatility;Boswijk;The Econometrics Journal,2018

5. Adaptive Testing for Cointegration with Nonstationary Volatility;Boswijk;Journal of Business and Economic Statistics,2021

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