Article ID: | iaor201526534 |
Volume: | 34 |
Issue: | 6 |
Start Page Number: | 441 |
End Page Number: | 454 |
Publication Date: | Sep 2015 |
Journal: | Journal of Forecasting |
Authors: | Chan Wai-Sum, Cheung Siu Hung, Chow Wai Kit, Zhang Li-Xin |
Keywords: | statistics: regression |
There is growing interest in exploring potential forecast gains from the nonlinear structure of multivariate threshold autoregressive (MTAR) models. A least squares‐based statistical test has been proposed in the literature. However, previous studies on univariate time series analysis show that classical nonlinearity tests are often not robust to additive outliers. The outlier problem is expected to pose similar difficulties for multivariate nonlinearity tests. In this paper, we propose a new and robust MTAR‐type nonlinearity test, and derive the asymptotic null distribution of the test statistic. A Monte Carlo experiment is carried out to compare the power of the proposed test with that of the least squares‐based test under the influence of additive time series outliers. The results indicate that the proposed method is preferable to the classical test when observations are contaminated by outliers. Finally, we provide illustrative examples by applying the statistical tests to two real datasets.