Reduce models, and report the results.
Given a umx model (currently umxACE and umxGxE are supported - ask for more!)
umxReduce will conduct a formalised reduction process. It will also report
Akaike weights are also reported showing relative support across models.
Specialized functions are called for different type of input:
GxE model reduction For umxGxE() models umxReduceGxE() is called.
ACE model reduction For umxACE() models,umxReduceACE() is called.
umxReduce reports the results in a table. Set the format of the table with
umx_set_table_format(), or set report= "html" to open a
table for pasting into a word processor.
umxReduce is a work in progress, with more automatic reductions coming as demand emerges.
I am thinking for RAM models to drop NS paths, and report that test.
umxReduce(
model,
report = c("markdown", "inline", "html"),
intervals = TRUE,
baseFileName = "tmp",
tryHard = "yes",
silent = FALSE,
...
)model |
The |
report |
How to report the results. "html" = open in browser |
intervals |
Recompute CIs (if any included) on the best model (default = TRUE) |
baseFileName |
(optional) custom filename for html output (defaults to "tmp") |
tryHard |
Default = "yes" |
silent |
Default = FALSE |
... |
Other parameters to control model summary |
Wagenmakers, E.J., & Farrell, S. (2004). AIC model selection using Akaike weights. Psychonomic Bulletin and Review, 11, 192-196. doi: 10.3758/BF03206482
Other Model Summary and Comparison:
umxCompare(),
umxEquate(),
umxMI(),
umxSetParameters(),
umxSummary(),
umx
Other Twin Modeling Functions:
power.ACE.test(),
umxACEcov(),
umxACEv(),
umxACE(),
umxCP(),
umxDoCp(),
umxDoC(),
umxGxE_window(),
umxGxEbiv(),
umxGxE(),
umxIP(),
umxReduceACE(),
umxReduceGxE(),
umxRotate.MxModelCP(),
umxSexLim(),
umxSimplex(),
umxSummarizeTwinData(),
umxSummaryACEv(),
umxSummaryACE(),
umxSummaryDoC(),
umxSummaryGxEbiv(),
umxSummarySexLim(),
umxSummarySimplex(),
umxTwinMaker(),
umx
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