Tests for Predictive Relationships Between Time Series Variables

A Monte Carlo Investigation

Charles R. Nelson

University of Washington, Seattle, WA
and National Bureau of Economic Research

G. William Schwert

University of Rochester, Rochester, NY 14627
and National Bureau of Economic Research

Journal of the American Statistical Association, 77 (March 1982) 11-18

Bivariate time series models have been used extensively to analyze the relationship between pairs of economic variables. Various tests have been proposed that can be used to examine the adequacy of specific models. The empirical literature is noteworthy for the frequency with which different authors using different tests reach different conclusions, and for the apparent lack of evidence for certain relationships strongly suggested by economic theory. The objective of this study is to use Monte Carlo methods to examine the size and power of alternative tests, and to relate these findings to the analytical structure of the tests.

Key words: Causality, Monte Carlo, Size, Power

JEL Classifications: C22

Cited 91 times in the SSCI and SCOPUS through 2016
© Copyright 1982, American Statistical Association
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