Aline wrote:I'm running a median c-hat GOF test in MARK (on a model exported from RMark). It's a complicated model with several states and many occasions and the test is taking a long time to run, even with few simulations.
I noticed while it was running that it was only using one core of my multi-core processor. When it got past the simulations to the logistic regression part it used all cores. It seems to me (admittedly, not the most computer-literate person) that the simulations would be perfect candidates for parallel processing. Is there any way to do that?
While the Fletcher c-hat shows considerable promise, several problems can cause this estimate to be
incorrect. First, losses on capture or dots in the encounter history will create encounter histories that are not considered in the total number of possible encounter histories. That is, the total number of possible encounter histories is based on no missing data. Second, parameter values that cause a reduction in the total number of encounter histories will bias the chat estimate. Examples of such reductions are an occasion in the CJS data type with p=0, or transition probabilities fixed to 0 or 1 in the multi-state data types.
wait until you go Bayesian, and it takes days for chains to converge for a *single model* for particularly ugly problems
compute time is cheap, relative to the cost of collecting the data
no 'flag to flip' to get MARK to run simulations, one per core
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