R/methods_BayesFM.R
model_parameters.befa.RdFormat Bayesian Exploratory Factor Analysis objects from the BayesFM package.
# S3 method for class 'befa'
model_parameters(
model,
sort = FALSE,
centrality = "median",
dispersion = FALSE,
ci = 0.95,
ci_method = "eti",
test = NULL,
verbose = TRUE,
...
)Bayesian EFA created by the BayesFM::befa.
Sort the loadings.
The point-estimates (centrality indices) to compute. Character
(vector) or list with one or more of these options: "median", "mean", "MAP"
(see map_estimate()), "trimmed" (which is just mean(x, trim = threshold)),
"mode" or "all".
Logical, if TRUE, computes indices of dispersion related
to the estimate(s) (SD and MAD for mean and median, respectively).
Dispersion is not available for "MAP" or "mode" centrality indices.
Value or vector of probability of the CI (between 0 and 1)
to be estimated. Default to 0.95 (95%).
The type of index used for Credible Interval. Can be "ETI"
(default, see eti()), "HDI" (see hdi()), "BCI" (see bci()),
"SPI" (see spi()), or "SI" (see si()).
The indices of effect existence to compute. Character (vector) or
list with one or more of these options: "p_direction" (or "pd"),
"rope", "p_map", "p_significance" (or "ps"), "p_rope",
"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.
Toggle warnings.
Arguments passed to or from other methods.
A data frame of loadings.
library(parameters)
# \donttest{
if (require("BayesFM")) {
efa <- BayesFM::befa(mtcars, iter = 1000)
results <- model_parameters(efa, sort = TRUE, verbose = FALSE)
results
efa_to_cfa(results, verbose = FALSE)
}
#> Loading required package: BayesFM
#> starting MCMC sampling...
#> 5%
#> 10%
#> 15%
#> 20%
#> 25%
#> 30%
#> 35%
#> 40%
#> 45%
#> done with burn-in period
#> 50%
#> 55%
#> 60%
#> 65%
#> 70%
#> 75%
#> 80%
#> 85%
#> 90%
#> 95%
#> 100%
#> done with sampling!
#> # Latent variables
#> F1 =~ am + mpg + vs
#> F2 =~ carb + cyl + disp + hp + wt
#> F3 =~ drat + gear + qsec
# }