Near-Optimal Unit Root Tests with Stationary Covariates with Better Finite Sample Size
نویسنده
چکیده
Numerous tests for integration and cointegration have been proposed in the literature. Since Elliott, Rothemberg and Stock (1996) the search for tests with better power has moved in the direction of finding tests with some optimality properties both in univariate and multivariate models. Although the optimal tests constructed so far have asymptotic power that is indistinguishable from the power envelope, it is well known that they can have severe size distortions in finite samples. This paper proposes a simple and powerful test that can be used to test for unit root or for no cointegration when the cointegration vector is known. Although this test is not optimal in the sense of Elliott and Jansson (2003), it has better finite sample size properties while having asymptotic power curves that are indistinguishable from the power curves of optimal tests. Similarly to Hansen (1995), Elliott and Jansson (2003), Zivot (2000), and Elliott, Jansson and Pesavento (2005) the proposed test achieves higher power by using additional information contained in covariates correlated with the variable being tested. The test is constructed by applying Hansen’s test to variables that are detrended under the alternative in a regression augmented with leads and lags of the stationary covariates. Using local to unity parametrization, the asymptotic distribution of the test under the null and the local alternative is analytically computed.
منابع مشابه
Unit Root Tests using GLS Detrended Data and Covariates in Structural Change Models∗
This paper extends the results of Elliott and Jansson (2003) to the context of structural change models. We show that when testing for a unit root against stationarity with an unknown structural break, substantial power gains can be achieved by incorporating extra information contained in an arbitrary number of covariates. The power gains are dependent on the long-run correlation between the sh...
متن کاملA Class of Simple Distribution-Free Rank-Based Unit Root Tests
We propose a class of distribution-free rank-based tests for the null hypothesis of a unit root. This class is indexed by the choice of a reference density g, which needs not coincide with the unknown actual innovation density f . The validity of these tests, in terms of exact finite sample size, is guaranteed, irrespective of the actual underlying density, by distribution-freeness. Those tests...
متن کاملRISE Working Paper 15 - 009 “ Bootstrapping Unit Root Tests with Covariates ” by Yoosoon Chang , Robin C . Sickles and Wonho Song RISE RICE INITIATIVE for the STUDY of ECONOMICS
We consider the bootstrap method for the covariates augmented DickeyFuller (CADF) unit root test suggested in Hansen (1995) which uses related variables to improve the power of univariate unit root tests. It is shown that there are substantial power gains from including correlated covariates. The limit distribution of the CADF test, however, depends on the nuisance parameter that represents the...
متن کاملThe Behavior of the Real Exchange Rate: A Re-examination Using Finite Sample Approach
Our results complement the recent ̄ndings of real exchange rates as stationary processes. The standard procedure of applying a battery of unit root tests can be problematic since the tests are sensitive to the speci ̄cs of the time series process. The novelty of the approach we apply is in emphasizing the information content of the data in distinguishing between the competing processes. Stationa...
متن کاملNo Country For Old Unit Root Tests: Bridge Estimators Differentiate between Nonstationary versus Stationary Models and Select Optimal Lag
This paper introduces a novel way of differentiating a unit root from a stationary alternative. We write up the model consisting of ”zero” and ”nonzero” parameters. If the lagged dependent variable has a coefficient of zero, we know that the variable has a unit root. We exploit this property and treat this as a model selection problem. We show that Bridge estimators can select the correct model...
متن کامل