R: Wooldridge first-difference-based test for AR(1) errors in...
pwfdtest
R Documentation
Wooldridge first-difference-based test for AR(1) errors in levels or first-differenced panel models
Description
First-differencing-based test of serial correlation for (the idiosyncratic component of) the errors in either levels or first-differenced panel models.
Usage
pwfdtest(x,...)
## S3 method for class 'panelmodel'
pwfdtest(x, ..., h0 = c("fd","fe"))
## S3 method for class 'formula'
pwfdtest(x, data, ..., h0 = c("fd","fe"))
Arguments
x
an object of class formula,
data
a data.frame,
h0
the null hypothesis: one of "fd","fe"
...
further arguments to be passed on to
linearHypothesis or to vcovHC
Details
As Wooldridge (2003/2010, Sec. 10.6.3) observes, if the idiosyncratic errors in the model in levels are uncorrelated (which we label hypothesis "fe"), then the errors of the model in first differences (FD) must be serially correlated with cor(hat{e}_{it}, hat{e}_{is})=-0.5 for each t,s. If on the contrary the levels model's errors are a random walk, then there must be no serial correlation in the FD errors (hypothesis "fd"). Both the fixed effects (FE) and the first-differenced (FD) estimators remain consistent under either assumption, but the relative efficiency changes: FE is more efficient under "fe", FD under "fd".
Wooldridge (ibid.) suggests basing a test for either hypothesis on a pooled regression of FD residuals on their first lag:
hat{e}_{i,t}=α + δ hat{e}_{i,t-1} + η_{i,t}. Rejecting the restriction δ = -0.5 makes us conclude against the null of no serial correlation in errors of the levels equation ("fe"). The null hypothesis of no serial correlation in differenced errors ("fd") is tested in a similar way, but based on the zero restriction on δ. Rejecting "fe" favours the use of the first-differences estimator and the contrary, although it is possible that both be rejected.
pwfdtest estimates the fd model and retrieves residuals, then estimates an AR(1) pooling model on them. The test statistic is obtained by applying linearHypothesis() to the latter model to test the relevant restriction on δ, setting the covariance matrix to vcovHC with the option method=''arellano'' to control for serial correlation.
Unlike the pbgtest and pdwtest, this test does not rely on large-T asymptotics and has therefore good properties in ”short” panels. Furthermore, it is robust to general heteroskedasticity. The "fe" version can be used to test for error autocorrelation regardless of whether the maintained specification has fixed or random effects (see Drukker, 2003).
Value
An object of class "htest".
Author(s)
Giovanni Millo
References
Drukker, D.M. (2003) Testing for serial correlation in linear
panel-data models, The Stata Journal, 3(2), pp. 168–177.
Wooldridge, J.M. (2003) Econometric analysis of cross-section and
panel data, MIT Press, Sec. 10.6.3, pp. 282–283.
Wooldridge, J.M. (2010) Econometric analysis of cross-section and
panel data, 2nd ed., MIT Press, Sec. 10.6.3, pp. 319–320.
See Also
pdwtest, pbgtest, pwartest
Examples
data(EmplUK)
pwfdtest(log(emp) ~ log(wage) + log(capital), data = EmplUK)
pwfdtest(log(emp) ~ log(wage) + log(capital), data = EmplUK, h0 = "fe")