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plot_prediction_deviation_panels() function for
visualizing predicted values and identifying deviant cases.plot_risk_vs_effect() function to create a
quadrant scatterplot comparing overall marginal predicted risk against
pure intersectional effects.plot_effect_decomposition() function to visually
decompose the total deviation from the overall mean into additive and
intersectional components.plot() and the interactive dashboard.autobin
parameter) for numeric grouping variables with more than 10 unique
values in make_strata().run_maihda_app()) to include the new visualizations and a
toggle for auto-binning continuous strata variables.fit_maihda() will
now automatically detect binomial outcomes and switch to the appropriate
family."logit" links
and \(1\) for "probit"
links) internally when summarizing models or bootstrapping the variance
partition coefficient, avoiding deflated VPC/ICC metrics.stepwise_pcv() function to sequentially estimate
proportional change in variance (PCV) by adding predictors
one-by-one.run_maihda_app()) for visual data exploration, model
fitting, and performance visualization.maihda_sim_data dataset to resolve R CMD check
warnings.tests/testthat.R was modified
to correctly use test_check("MAIHDA") instead of
shinytest2.importFrom(stats, as.formula) for the
stepwise_pcv function to prevent undefined warnings.introduction.Rmd vignette: added standard CRAN
installation instructions, and improved text clarity.make_strata() function for creating
intersectional stratafit_maihda() function for fitting multilevel
models with lme4 (default) or brms enginessummary() function for variance partition and
stratum estimatespredict_maihda() function for individual and
stratum-level predictionsplot() function with three plot types:
compare_maihda() function for comparing models
with bootstrap confidence intervalsmake_strata() to properly handle missing
values (NA) in input variables:
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.
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