Title
Could the test from the standard regression model make a significant regression with autoregressive noise become insignificant?
Authors
Abstract
This paper extends Cheng, et al. (2022) to investigate whether the statistics TN for testing H
0 : β = β0 versus H1 : β ̸= β0 from the traditional regression model from the standard regression model Yt = α+βXt+ut where ut is assumed to be iid N(0, σ2) could be used for regression with autoregressive noise. To do so, we set Yt = Y1;t + Y2;t with Y2;t = ϕY2;t−1 + et in which et i∼id (0, σ2e) so that the regression contains autoregressive noise and we use the statistics TN for testing H0 : β = β0 versus H1 : β ̸= β0 when the actual β > 0, for example, β = 0.1. In our simulation, we found that the average rejection rate is less than the level of significance for any sample size N smaller than 100. However, for large N, say, N = 1000, the test conrms that the model is significant. Our findings confirm that the test from the standard regression model could make a significant regression with autoregressive noise become insignificant for small sample sizes, but not for very large sample sizes.
Keywords
Stationarity, autoregression, regression, time series analysis, re-gression with autoregressive noise
JEL Classication
C01, C15, C22, C58, C60
How to Cite
Wong, W.-K. & Pham, M. T. (2022). Could the test from the standard regression model could make significant regression with autoregressive noise become insignificant?. The International Journal of Finance, 34, 1–18.