Abstract :
This paper develops tests for the null hypothesis of cointegration in the nonlinear
regression model with I (1) variables. The test statistics we use in this paper are
Kwiatkowski, Phillips, Schmidt, and Shin’s (1992; KPSS hereafter) tests for the null
of stationarity, though using other kinds of tests is also possible. The tests are shown
to depend on the limiting distributions of the estimators and parameters of the nonlinear
model when they use full-sample residuals from the nonlinear least squares
and nonlinear leads-and-lags regressions. This feature makes it difficult to use them
in practice. As a remedy, this paper develops tests using subsamples of the regression
residuals. For these tests, first, the nonlinear least squares and nonlinear leadsand-
lags regressions are run and residuals are calculated. Second, the KPSS tests
are applied using subresiduals of size b. As long as b/T →0 as T →∞, where
T is the sample size, the tests using the subresiduals have limiting distributions that
are not affected by the limiting distributions of the full-sample estimators and the
parameters of the model. Third, the Bonferroni procedure is used for a selected number
of the subresidual-based tests. Monte Carlo simulation shows that the tests work
reasonably well in finite samples for polynomial and smooth transition regression
models when the block size is chosen by the minimum volatility rule. In particular,
the subresidual-based tests using the leads-and-lags regression residuals appear to
be promising for empirical work. An empirical example studying the U.S. money
demand equation illustrates the use of the tests.