Comments (1)
Now methods without joint likelihoods run each supplied dataset in sequence. The order to which each dataset is added to the BiodiversityDistribution
object determines the sequence.
Ensemble modelling has been added in previous commits and thus is rather be conducted through several individual fits.
Withheld cross-validation functionalities are better organised externally outside the package. However I might think of adding a recipe
function.
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Related Issues (20)
- Question about output map in vigenette "Train a basic model" HOT 3
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