model.fit.plot: Graphical representation of the measures of model fitting based on
Information Criteria
Description
Plots a summary of the model fit for all the models fitted
Usage
model.fit.plot(..., type = "aic", scale = "absolute", stacked = FALSE)
Value
A plot with the relevant model fitting statistics
Arguments
...
Optional inputs. Must include at least one survHE object.
type
should the AIC, the BIC or the DIC plotted? (values = "aic",
"bic" or "dic")
scale
If scale='absolute' (default), then plot the absolute value
of the *IC. If scale='relative' then plot a rescaled version taking
the percentage increase in the *IC in comparison with the best-fitting model
stacked
Should the bars be stacked and grouped by survHE object? (default=F)
Author
Gianluca Baio
Details
Something will go here
References
G Baio (2019). survHE: Survival analysis for health economic evaluation
and cost-effectiveness modelling. Journal of Statistical Software (2020). vol 95,
14, 1-47. doi:10.18637/jss.v095.i14