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Compute bootstrapped parameters and their related indices such as Confidence Intervals (CI) and p-values.
bootstrap_parameters(
model,
iterations = 1000,
centrality = "median",
ci = 0.95,
ci_method = "quantile",
test = "p-value",
...
)
Statistical model.
The number of draws to simulate/bootstrap.
The point-estimates (centrality indices) to compute. Character (vector) or list with one or more of these options: "median"
, "mean"
, "MAP"
or "all"
.
Value or vector of probability of the CI (between 0 and 1)
to be estimated. Default to .89
(89%) for Bayesian models and .95
(95%) for frequentist models.
The indices to compute. Character (vector) with one or more of these options: "p-value"
(or "p"
), "p_direction"
(or "pd"
), "rope"
, "p_map"
, "equivalence_test"
(or "equitest"
), "bayesfactor"
(or "bf"
) or "all"
to compute all tests. For each "test", the corresponding bayestestR function is called (e.g. rope
or p_direction
) and its results included in the summary output.
Arguments passed to or from other methods.
Bootstrapped parameters.
This function first calls bootstrap_model
to generate
bootstrapped coefficients. The resulting replicated for each coefficient
are treated as "distribution", and is passed to describe_posterior
to calculate the related indices defined in the "test"
argument.
Davison, A. C., & Hinkley, D. V. (1997). Bootstrap methods and their application (Vol. 1). Cambridge university press.
# NOT RUN {
library(parameters)
model <- lm(Sepal.Length ~ Species * Petal.Width, data = iris)
bootstrap_parameters(model)
# }
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