Baconvergence: Test to identify poorly mixed MCMC runs.
Description
Test how well-mixed and converged the MCMC runs are with the chosen core and settings, by running the core several times and comparing the different runs using the Gelman and Rubin Reduction factor (Brooks and Gelman, 1998).
Name of the core, given using quotes. Defaults to one of the cores provided with rbacon, core="MSB2K".
runs
Amount of runs to test for mixing. Default runs=5.
suggest
If initial analysis of the data indicates abnormally slow or fast accumulation rates, Bacon will suggest to change the prior.
verbose
Provide feedback on what is happening (default verbose=TRUE).
...
additional options that can be given to the Bacon function.
Value
NA
Details
Generally Bacon will perform millions of MCMC iterations for each age-model run, although only a fraction
of these will be stored. In most cases the remaining MCMC iterations will be well mixed (the upper left panel
of the fit of the iterations shows no strange features such as sudden systematic drops or rises).
However if the iterations seem not well mixed, or if too few remain (say less than a few hundred),
then you could check the Gelman and Rubin Reduction Factor. Too high differences (high Factors) between runs
indicate poor MCMC mixing. Robust MCMC mixing is indicated by a Gelman and Rubin Reduction factor
(Brooks and Gelman, 1998) below the 1.05 safety threshold.
References
Brooks, SP. and Gelman, A. (1998) General methods for monitoring
convergence of iterative simulations.
_Journal of Computational and Graphical Statistics, *7*, 434-455.