What role does the concept of cointegration and the order of integration play in modeling the relationship between variables? Explain how tests of cointegration work
What will be an ideal response?
Answer: Cointegration between two or more variables is a regression analysis concept to potentially reveal long-run relationships among time series variables. Variables are said to be cointegrated if the have the same stochastic trend in common. Most economic time series are I(1) variables, which means that they have a unit autoregressive root and that the first difference in that variable is stationary. Since these variables are often measured in logs, their first difference approximates growth rates. Cointegration requires a common stochastic trend. Therefore, variables which are tested for cointegration must have the same order of integration.
The concept of cointegration is also an effort to bring back long-run relationships between variables into short-run forecasting techniques, such as VARs. Adding the error correction term from the cointegrating relationship to the VARs results in the vector error correction model. Here all variables are stationary, either because they have been differenced or because the common stochastic trend has been removed. VECMs therefore combine short-run and long-run information. One way to think about the role of the error correction term is that it provides an "anchor" which pulls the modeled relationships eventually back to their long-run behavior, even if it is disturbed by shocks in the short-run.
Cointegration also represents the return of the static regression model, i.e., regressions where no lags or used. To test for cointegration using the EG-ADF test requires estimating a static regression between the potentially cointegrated variables by OLS first, and then to conduct an ADF test on the residuals from this regression. If the residuals do not have a unit root, then the variables are said to be cointegrated. Since this is a two step procedure, critical values for the ADF t-statistic are adjusted and are referred to the critical values for the EG-ADF statistic. Although the OLS estimator is consistent, it has a nonnormal distribution and hence inference should not be conducted based on the t-statistic, even if HAC standard errors are used. Alternative techniques to circumvent this problem, such as the DOLS estimator, which is consistent and efficient in large samples, have been developed. The DOLS and another frequently used technique, called the Johansen method, can be easily extended to multiple cointegrating relationships.
You might also like to view...
Which of the following events would cause a shift to the right in the supply curve?
(A) The manufacturer lowers the price of its candy bars. (B) The plant shuts down for several weeks because there's been a fire. (C) A candy bar manufacturer raises the price of its candy bars. (D) Upgrades to its mixing equipment allow the plant to make more bars.
One argument advanced in favor of not increasing the income tax on individuals with high income is that
A) increasing income tax increases wealth which contributes to increases in GDP. B) increasing the income tax on these individuals will reduce economic efficiency. C) not increasing income taxes will discourage corporations from increasing investment. D) increasing the income tax affects mostly middle-income and low-income individuals who are already paying heavy income taxes.