Data integration help (joint likelihood) #69
Replies: 2 comments 4 replies
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Hi Simon, Cool that you testing out the package for your usecase. Here are some quick reactions.
Good luck, Fitting models with INLA is a pain :) |
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Not really a conclusion to this thread as lots of things that I am yet to try out but just some results from trying type=predictor. Using type = predictor does seem to give more useful predictions (in terms of eyeballing the real species distribution) however the cv seems to be less useful. Also noticing that the cv of the And here's
Attempting to add SPDE resulted in model failure:
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I have put this in here as a discussion rather than issue - hope that's appropriate.
I want to fit a model with joint likelihood. I am testing with simulated data. Here's a rendered markdown to help illustrate (it was html but I can't seem to upload html to I've saved it as a pdf)
MAMBO sim framework tests.pdf
I've simulated species with NLMR (for the environment) and virtualspecies (for the species). Then simulating sampling via 3 methods: presence only (eg. citizen science), presence/absence (eg. a survey), presence/absence via something similar to an automated monitoring system eg. acoustic recorder which has very few locations but multiple sampling events.
So this is what I have:
Key:
When I fit separate models these are the result (each row is a different model):
They vary in success but that's expected, especially as the automated trap only has 4 locations and so can sometimes predict quite poorly.
However I thought this would be a good scenario where data integration would work well however the integrated models don't look great (each of these is a different integrated combining different data sets, then all datasets):
This is my fully integrated model, the other are simply with dataset removed from the pipe
Why are the predicted values so large, up to 10000? I found when I log the predicted values the map actually looks okay so do I have a scaling issue?
The data integration docs page seems to imply that I shouldn't need to be generating pseudoabsences as it's modelling with a PPM. Is that correct?
Do I need to do some more additional set-up, parameterisation, priors etc.?
Any help would be appreciated, thanks in advance!
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