Testing for Trend

34 Pages Posted: 19 Mar 2007

See all articles by Fabio Busetti

Fabio Busetti

Bank of Italy

Andrew Harvey

University of Cambridge - Department of Applied Economics

Date Written: February 2007

Abstract

The paper examines various tests for assessing whether a time series model requires a slope component. We first consider the simple t-test on the mean of first differences and show that it achieves high power against the alternative hypothesis of a stochastic nonstationary slope as well as against a purely deterministic slope. The test may be modified, parametrically or nonparametrically to deal with serial correlation. Using both local limiting power arguments and finite sample Monte Carlo results, we compare the t-test with the nonparametric tests of Vogelsang (1998) and with a modified stationarity test. Overall the t-test seems a good choice, particularly if it is implemented by fitting a parametric model to the data. When standardized by the square root of the sample size, the simple t-statistic, with no correction for serial correlation, has a limiting distribution if the slope is stochastic. We investigate whether it is a viable test for the null hypothesis of a stochastic slope and conclude that its value may be limited by an inability to reject a small deterministic slope. Empirical illustrations are provided using series of relative prices in the euro-area and data on global temperature.

Keywords: Cramér-von Mises distribution, stationarity test, stochastic trend, unit root, unobserved component

JEL Classification: C22, C52

Suggested Citation

Busetti, Fabio and Harvey, Andrew, Testing for Trend (February 2007). Bank of Italy Economic Research Paper No. 614, Available at SSRN: https://ssrn.com/abstract=970290 or http://dx.doi.org/10.2139/ssrn.970290

Fabio Busetti (Contact Author)

Bank of Italy ( email )

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Andrew Harvey

University of Cambridge - Department of Applied Economics ( email )

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Cambridge, CB3 9DE
United Kingdom
+44 1223 335 228 (Phone)
+44 1223 335 475 (Fax)

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