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BioGeoBEARS (version 0.2.1)

lrttest_on_summary_table: Calculate Likelihood Ratio Test (LRT) results, and add to table

Description

The Likelihood Ratio Test (LRT) is a standard method for testing whether or not the data likelihood conferred by a more complex is significantly better than the data likelihood conferred by the simpler model, given a certain number of extra free parameters for the complex model. The null hypothesis is that there is no difference; rejection means that there is a statistically significant improvement in the more complex model.

Usage

lrttest_on_summary_table(restable, row_to_use_as_null, rows_to_exclude, returnwhat = "pval", add_to_table = TRUE)

Arguments

restable
A data.frame with at least columns named "LnL" and "nparams".
row_to_use_as_null
This is the row specifying the model to which the others will be compared in pairwise fashion.
rows_to_exclude
Some rows may have models that the simpler model cannot nest within. These should be excluded.
returnwhat
If "pval", just return the p-value. If "all", return all of the intermediate outputs.
add_to_table
If TRUE, add to the main table and return the main table. If FALSE, return just the Akaike Weights results.

Value

pval or LRTrow, both data.frame. Depends on returnwhat.

Details

The LRT only works for situations in which the simpler model is nested within the more complex model (i.e., by taking some parameters of the more complex model and forcing them to be fixed to a specific value). In addition, the LRT may be unreliable in data-poor situations, and inherits whatever difficulties there may be in ML searches. See Burnham et al. (2002) for discussion.

This function assumes that the log-likelihoods are in the column "LnL", and the number of parameters is specified in "nparams"

References

http://phylo.wikidot.com/matzke-2013-international-biogeography-society-poster

Burnham_Anderson_2002

Matzke_2012_IBS

See Also

lrttest

Examples

Run this code
test=1

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