Tidy summarizes information about the components of a model. A model component might be a single term in a regression, a single hypothesis, a cluster, or a class. Exactly what tidy considers to be a model component varies across models but is usually self-evident. If a model has several distinct types of components, you will need to specify which components to return.
# S3 method for class 'betareg'
tidy(x, conf.int = FALSE, conf.level = 0.95, ...)
A betareg
object produced by a call to betareg::betareg()
.
Logical indicating whether or not to include a confidence
interval in the tidied output. Defaults to FALSE
.
The confidence level to use for the confidence interval
if conf.int = TRUE
. Must be strictly greater than 0 and less than 1.
Defaults to 0.95, which corresponds to a 95 percent confidence interval.
Additional arguments. Not used. Needed to match generic
signature only. Cautionary note: Misspelled arguments will be
absorbed in ...
, where they will be ignored. If the misspelled
argument has a default value, the default value will be used.
For example, if you pass conf.lvel = 0.9
, all computation will
proceed using conf.level = 0.95
. Two exceptions here are:
The tibble has one row for each term in the regression. The
component
column indicates whether a particular
term was used to model either the "mean"
or "precision"
. Here the
precision is the inverse of the variance, often referred to as phi
.
At least one term will have been used to model the precision phi
.
A tibble::tibble()
with columns:
Upper bound on the confidence interval for the estimate.
Lower bound on the confidence interval for the estimate.
The estimated value of the regression term.
The two-sided p-value associated with the observed statistic.
The value of a T-statistic to use in a hypothesis that the regression term is non-zero.
The standard error of the regression term.
The name of the regression term.
Whether a particular term was used to model the mean or the precision in the regression. See details.
# load libraries for models and data
library(betareg)
# load dats
data("GasolineYield", package = "betareg")
# fit model
mod <- betareg(yield ~ batch + temp, data = GasolineYield)
#> Warning: NaNs produced
#> Error in while (testhalf & stepFactor < 11) { fit <- fitfun(par, deriv = 2L) scores <- gradfun(par, fit = fit) InfoInv <- try(hessfun(par, fit = fit, inverse = TRUE)) if (failedInv <- inherits(InfoInv, "try-error")) { warning("failed to invert the information matrix: iteration stopped prematurely") break } bias <- if (type == "BR") biasfun(par, fit = fit, vcov = InfoInv)$bias else 0 par <- par + 2^(-stepFactor) * (step <- InfoInv %*% scores - bias) stepFactor <- stepFactor + 1 testhalf <- drop(crossprod(stepPrev) < crossprod(step))}: missing value where TRUE/FALSE needed
mod
#> Error: object 'mod' not found
# summarize model fit with tidiers
tidy(mod)
#> Error: object 'mod' not found
tidy(mod, conf.int = TRUE)
#> Error: object 'mod' not found
tidy(mod, conf.int = TRUE, conf.level = .99)
#> Error: object 'mod' not found
augment(mod)
#> Error: object 'mod' not found
glance(mod)
#> Error: object 'mod' not found