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insight (version 0.20.4)

model_info: Access information from model objects

Description

Retrieve information from model objects.

Usage

model_info(x, ...)

# S3 method for default model_info(x, verbose = TRUE, ...)

Value

A list with information about the model, like family, link-function etc. (see 'Details').

Arguments

x

A fitted model.

...

Currently not used.

verbose

Toggle off warnings.

Details

model_info() returns a list with information about the model for many different model objects. Following information is returned, where all values starting with is_ are logicals.

  • is_binomial: family is binomial (but not negative binomial)

  • is_bernoulli: special case of binomial models: family is Bernoulli

  • is_poisson: family is poisson

  • is_negbin: family is negative binomial

  • is_count: model is a count model (i.e. family is either poisson or negative binomial)

  • is_beta: family is beta

  • is_betabinomial: family is beta-binomial

  • is_orderedbeta: family is ordered beta

  • is_dirichlet: family is dirichlet

  • is_exponential: family is exponential (e.g. Gamma or Weibull)

  • is_logit: model has logit link

  • is_probit: model has probit link

  • is_linear: family is gaussian

  • is_tweedie: family is tweedie

  • is_ordinal: family is ordinal or cumulative link

  • is_cumulative: family is ordinal or cumulative link

  • is_multinomial: family is multinomial or categorical link

  • is_categorical: family is categorical link

  • is_censored: model is a censored model (has a censored response, including survival models)

  • is_truncated: model is a truncated model (has a truncated response)

  • is_survival: model is a survival model

  • is_zero_inflated: model has zero-inflation component

  • is_hurdle: model has zero-inflation component and is a hurdle-model (truncated family distribution)

  • is_dispersion: model has dispersion component (not only dispersion parameter)

  • is_mixed: model is a mixed effects model (with random effects)

  • is_multivariate: model is a multivariate response model (currently only works for brmsfit and vglm/vgam objects)

  • is_trial: model response contains additional information about the trials

  • is_bayesian: model is a Bayesian model

  • is_gam: model is a generalized additive model

  • is_anova: model is an Anova object

  • is_ttest: model is an an object of class htest, returned by t.test()

  • is_correlation: model is an an object of class htest, returned by cor.test()

  • is_ranktest: model is an an object of class htest, returned by cor.test() (if Spearman's rank correlation), wilcox.text() or kruskal.test().

  • is_variancetest: model is an an object of class htest, returned by bartlett.test(), shapiro.test() or car::leveneTest().

  • is_levenetest: model is an an object of class anova, returned by car::leveneTest().

  • is_onewaytest: model is an an object of class htest, returned by oneway.test()

  • is_proptest: model is an an object of class htest, returned by prop.test()

  • is_binomtest: model is an an object of class htest, returned by binom.test()

  • is_chi2test: model is an an object of class htest, returned by chisq.test()

  • is_xtab: model is an an object of class htest or BFBayesFactor, and test-statistic stems from a contingency table (i.e. chisq.test() or BayesFactor::contingencyTableBF()).

  • link_function: the link-function

  • family: name of the distributional family of the model. For some exceptions (like some htest objects), can also be the name of the test.

  • n_obs: number of observations

  • n_grouplevels: for mixed models, returns names and numbers of random effect groups

Examples

Run this code
ldose <- rep(0:5, 2)
numdead <- c(1, 4, 9, 13, 18, 20, 0, 2, 6, 10, 12, 16)
sex <- factor(rep(c("M", "F"), c(6, 6)))
SF <- cbind(numdead, numalive = 20 - numdead)
dat <- data.frame(ldose, sex, SF, stringsAsFactors = FALSE)
m <- glm(SF ~ sex * ldose, family = binomial)

# logistic regression
model_info(m)

# t-test
m <- t.test(1:10, y = c(7:20))
model_info(m)

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