
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 .95
(95%).
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.
A data frame summarizing the bootstrapped parameters.
The output can be passed directly to the various functions from the
emmeans
package, to obtain bootstrapped estimates, contrasts, simple
slopes, etc. and their confidence intervals. These can then be passed to
model_parameter()
to obtain standard errors, p-values, etc (see
example).
Note that that p-values returned here are estimated under the assumption of translation equivariance: that shape of the sampling distribution is unaffected by the null being true or not. If this assumption does not hold, p-values can be biased, and it is suggested to use proper permutation tests to obtain non-parametric p-values.
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.
Note that that p-values returned here are estimated under the assumption of translation equivariance: that shape of the sampling distribution is unaffected by the null being true or not. If this assumption does not hold, p-values can be biased, and it is suggested to use proper permutation tests to obtain non-parametric p-values.
Davison, A. C., & Hinkley, D. V. (1997). Bootstrap methods and their application (Vol. 1). Cambridge university press.
# NOT RUN {
if (require("boot", quietly = TRUE)) {
set.seed(2)
model <- lm(Sepal.Length ~ Species * Petal.Width, data = iris)
b <- bootstrap_parameters(model)
print(b)
if (require("emmeans")) {
est <- emmeans(b, trt.vs.ctrl ~ Species)
print(model_parameters(est))
}
}
# }
Run the code above in your browser using DataLab