Statistical hypothesis test for the presence of serial correlation
In statistics, the Breusch–Godfrey test is used to assess the validity of some of the modelling assumptions inherent in applying regression-like models to observed data series.[1][2] In particular, it tests for the presence of serial correlation that has not been included in a proposed model structure and which, if present, would mean that incorrect conclusions would be drawn from other tests or that sub-optimal estimates of model parameters would be obtained.
The regression models to which the test can be applied include cases where lagged values of the dependent variables are used as independent variables in the model's representation for later observations. This type of structure is common in econometric models.
Because the test is based on the idea of Lagrange multiplier testing, it is sometimes referred to as an LM test for serial correlation.[4]
A similar assessment can be also carried out with the Durbin–Watson test and the Ljung–Box test. However, the test is more general than that using the Durbin–Watson statistic (or Durbin's h statistic), which is only valid for nonstochastic regressors and for testing the possibility of a first-order autoregressive model (e.g. AR(1)) for the regression errors.[citation needed] The BG test has none of these restrictions, and is statistically more powerful than Durbin's h statistic.[citation needed]
The BG test is considered to be more general than the Ljung-Box test because the latter requires the assumption of strict exogeneity, but the BG test does not. However, the BG test requires the assumptions of stronger forms of predeterminedness and conditional homoscedasticity.
where stands for the arithmetic mean over the last samples, where is the total number of observations and is the number of error lags used in the auxiliary regression.
^Breusch, T. S. (1978). "Testing for Autocorrelation in Dynamic Linear Models". Australian Economic Papers. 17: 334–355. doi:10.1111/j.1467-8454.1978.tb00635.x.
^Godfrey, L. G. (1978). "Testing Against General Autoregressive and Moving Average Error Models when the Regressors Include Lagged Dependent Variables". Econometrica. 46: 1293–1301. JSTOR1913829.
Godfrey, L. G. (1988). Misspecification Tests in Econometrics. Cambridge, UK: Cambridge. ISBN0-521-26616-5.
Godfrey, L. G. (1996). "Misspecification Tests and Their Uses in Econometrics". Journal of Statistical Planning and Inference. 49 (2): 241–260. doi:10.1016/0378-3758(95)00039-9.
Maddala, G. S.; Lahiri, Kajal (2009). Introduction to Econometrics (Fourth ed.). Chichester: Wiley. pp. 259–260.