Could the test from the standard regression model could make signi ficant regression with autoregressive noise become insigni ficant?

Could the test from the standard regression model could make signi ficant regression with autoregressive noise become insigni ficant?

Title

Could the test from the standard regression model could make signifi cant regression with autoregressive noise become insigni ficant?

Authors

  • Wing-Keung Wong
    Department of Finance and Big Data Research Center, Asia University
    Department of Medical Research, China Medical University Hospital, Taiwan
    Business, Economic and Public Policy Research Centre, Hong Kong Shue Yan University
  • Minh Tam Pham
    Department of Finance, College of Management, Asia University

Abstract

This paper extends Cheng, et al. (2022) to investigate whether the statistics T N for testing H
0 : β = β0 versus H 1 : 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 T N for testing H 0 : 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 signi ficance for any sample size N smaller than 100. However, for large N, say, N = 1000, the test con rms that the model is signifi cant. Our fi ndings confi rm that the test from the standard regression model could make a signi ficant regression with autoregressive noise become insignifi cant for small sample sizes, but not for very large sample sizes.

Keywords

Stationarity, autoregression, regression, time series analysis, re-gression with autoregressive noise

JEL Classi cation

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 signi ficant regression with autoregressive noise become insignifi cant?. The International Journal of Finance, 34, 1–18.