Robust Tests for White Noise and Cross-Correlation

89 Pages Posted: 2 Apr 2020

See all articles by Violetta Dalla

Violetta Dalla

- Department of Economics

Liudas Giraitis

Queen Mary

Peter C. B. Phillips

University of Auckland Business School; Yale University - Cowles Foundation; Singapore Management University - School of Economics

Date Written: March 27, 2020

Abstract

Commonly used tests to assess evidence for the absence of autocorrelation in a univariate time series or serial cross-correlation between time series rely on procedures whose validity holds for i.i.d. data. When the series are not i.i.d., the size of correlogram and cumulative Ljung-Box tests can be significantly distorted. This paper adapts standard correlogram and portmanteau tests to accommodate hidden dependence and non-stationarities involving heteroskedasticity, thereby uncoupling these tests from limiting assumptions that reduce their applicability in empirical work. To enhance the Ljung-Box test for non-i.i.d. data a new cumulative test is introduced. Asymptotic size of these tests is unaffected by hidden dependence and heteroskedasticity in the series. Related extensions are provided for testing cross-correlation at various lags in bivariate time series. Tests for the i.i.d. property of a time series are also developed. An extensive Monte Carlo study confirms good performance in both size and power for the new tests. Applications to real data reveal that standard tests frequently produce spurious evidence of serial correlation.

Keywords: Serial correlation, Cross-correlation, Heteroskedasticity, Martingale differences

JEL Classification: C12

Suggested Citation

Dalla, Violetta and Giraitis, Liudas and Phillips, Peter C. B., Robust Tests for White Noise and Cross-Correlation (March 27, 2020). Cowles Foundation Discussion Paper No. 2194R, Available at SSRN: https://ssrn.com/abstract=3564701 or http://dx.doi.org/10.2139/ssrn.3564701

Violetta Dalla

- Department of Economics ( email )

1, Sofokleous Str
Athens, GR- 10559
Greece

Liudas Giraitis

Queen Mary ( email )

Mile End Road
London, London E1 4NS
United Kingdom

HOME PAGE: http://www.econ.qmul.ac.uk/people/liudas-giraitis

Peter C. B. Phillips (Contact Author)

University of Auckland Business School ( email )

12 Grafton Rd
Private Bag 92019
Auckland, 1010
New Zealand
+64 9 373 7599 x7596 (Phone)

Yale University - Cowles Foundation ( email )

Box 208281
New Haven, CT 06520-8281
United States
203-432-3695 (Phone)
203-432-5429 (Fax)

Singapore Management University - School of Economics

90 Stamford Road
178903
Singapore

Do you have a job opening that you would like to promote on SSRN?

Paper statistics

Downloads
431
Abstract Views
1,999
Rank
168,873
PlumX Metrics