(1) Department of Mathematics, Technical University of Berlin, D-10623 Berlin, Germany, DE;(2) Department of Mathematics and Computer Science, University of Marburg, D-35032 Marburg, Germany, DE
Abstract:
We study a “direct test” of Chu and White (1992) proposed for detecting changes in the trend of a linear regression model. The power of this test strongly depends on a suitable estimation of the variance of the error variables involved. We discuss various types of variance estimators and derive their asymptotic properties under the null-hypothesis of “no change” as well as under the alternative of “a change in linear trend”. A small simulation study illustrates the estimators' finite sample behaviour.