RDP 9105: Inflation in Australia: Causes, Inertia and Policy Appendix 3: Tests for Serial Correlation and Heteroskedasticity

In Table 1, the abbreviations SC(1), SC(2) and SC(3) refer to the test statistics for first, second and third order serial correlation respectively.

Stewart (1986) outlines a Lagrange Multiplier test for serial correlation in a model which is linear in variables but non-linear in parameters.

Consider the model

where yt is the dependent variable, g is the model specification with variables Xt and parameters b and ut is the error term. The estimated model yields a series of parameter estimates Inline Equation and estimated errors Inline Equation. The individual error terms Inline Equation are standardised by subtracting their sample mean to produce the series Inline Equation.

The partial derivatives of g (denoted Inline Equation) with respect to each of the parameters b are calculated and evaluated at the parameter estimates Inline Equation. The auxiliary regression (a2.2) of Inline Equation on Inline Equation and Inline Equation (the residual series lagged j times) is estimated to test for the presence of serial correlation specifically of the order j.

The test statistic is equal to T.R2 where R2 and T (the number of observations) refer to the estimation of equation (a3.2). This test statistic is distributed as χ2(1).

The abbreviations HS(1) and HS(2) in table 1 denote tests for different forms of heteroskedasticity of the residuals.

Stewart outlines how the Breusch-Pagan test can be used to test for heteroskedasticity related to a time trend (HS(1)) or the value of predicted dependent variable (HS(2)).

Using the error term series Inline Equation outlined above, equation (a3.3) is estimated:

where Inline Equation is the sample variance of Inline Equation, Zt is the variable potentially related to the heteroskedasticity of Inline Equation, κ0 and κ1 are parameters and ut is an error term. For HS(1), Zt is a time trend. For HS(2), Zt is the predicted value of dependent variable in the primary estimation (from equation a3.1).

In both cases, the test statistic is equal to T.R2 where R2 and T (the number of observations) refer to the estimation of equation (a3.3). This test statistic is distributed as χ2(1).