Description Usage Arguments Details Value Author(s) See Also
It produces diagnostic plots based on (randomised) quantile residuals.
| 1 2 3 4 | post.check(x, main = "Histogram and Density Estimate of Residuals", 
           main2 = "Histogram and Density Estimate of Residuals",
           xlab = "Quantile Residuals", xlab2 = "Quantile Residuals", 
           intervals = FALSE, n.sim = 100, prob.lev = 0.05, ...)
 | 
| x | A fitted  | 
| main | Title for the plot. | 
| main2 | Title for the plot in the second row. This comes into play only when fitting models with two non-binary margins. | 
| xlab | Title for the x axis. | 
| xlab2 | Title for the x axis in the second row. As above. | 
| intervals | If  | 
| n.sim | Number of replicate datasets used to simulate quantiles of the residual distribution. | 
| prob.lev | Overall probability of the left and right tails of the probabilities' distributions used for interval calculations. | 
| ... | Other graphics parameters to pass on to plotting commands. | 
If the model fits the response well then the plots should look normally distributed.
When fitting models with discrete and/or continuous margins, four plots will be produced. In this case,
the arguments main2 and xlab2 come into play and allow for different
labelling across the plots. 
| qr | It returns the (randomised) quantile residuals for the continuous or discrete margin when fitting a model that involves a binary response. | 
| qr1 | As above but for first equation (this applies when fitting models with continuous/discrete margins). | 
| qr2 | As above but for second equation. | 
Maintainer: Giampiero Marra giampiero.marra@ucl.ac.uk
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