4.10 Diagnostic Testing
ARDL model provide objective results on a smaller set of time series related
data and for the result to be robust, certain diagnostics test needs to be
conducted to determine the validity of the results and also to ensure the results
are statistically robust. However, the test for stability, heteroscedasticity,
misspecification, serial correlation and residual normality are needed to be
conducted to ascertain if the model is free from biases and can provide a
satisfactory result. If the tests produce satisfactory results, we are in good
position to use it for analysis.
4.10.1 Test for Stability
ARDL model is highly sensitive to structural break and also the use of financial
related time series that is sensitive to events globally, the need to analyse the
stability of the coefficients is of major significance in order to assess the
stability of the long-run and short-run coefficients. The test for stability
proposed by (Brown, Durbin, & Evans, 1975) are the CUSUM and CUSUMSQ
test and can be conducted for stability.
The CUSUM test is based on the cumulative sum of the recursive residuals
and the CUSUMSQ test is on the cumulative sum of squared recursive
residuals (CUSUMSQ) and they are of graphical nature whereas the residuals
are updated recursively and plotted against the break points for the 5%
significance line. The concept of the CUSUM test provides, where the
cumulative sum of recursive residuals is plotted against the upper and lower
95 % confidence bounds and the same goes for the CUSUMSQ. If results of
the test show a range within 5% significant level, indicating that the long-run
and short-run coe
fficients are stable. However, both tests analyses if the
residuals do not significantly diverge from its mean value by imposing parallel
critical lines on a significant level of 5%. This is illustrated on figure 2 below.
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