The plot()
method for the parameters::model_parameters()
function.
# S3 method for see_parameters_model
plot(
x,
show_intercept = FALSE,
size_point = 0.8,
size_text = NA,
sort = NULL,
n_columns = NULL,
type = c("forest", "funnel"),
weight_points = TRUE,
show_labels = FALSE,
show_estimate = TRUE,
show_interval = TRUE,
show_density = FALSE,
show_direction = TRUE,
log_scale = FALSE,
...
)# S3 method for see_parameters_sem
plot(
x,
data = NULL,
component = c("regression", "correlation", "loading"),
type = component,
threshold_coefficient = NULL,
threshold_p = NULL,
ci = TRUE,
size_point = 22,
...
)
A ggplot2-object.
An object.
Logical, if TRUE
, the intercept-parameter is included
in the plot. By default, it is hidden because in many cases the
intercept-parameter has a posterior distribution on a very different
location, so density curves of posterior distributions for other parameters
are hardly visible.
Numeric specifying size of point-geoms.
Numeric value specifying size of text labels.
The behavior of this argument depends on the plotting contexts.
Plotting model parameters:
If NULL
, coefficients are plotted in the order as they appear in the
summary. Setting sort = "ascending"
or sort = "descending"
sorts
coefficients in ascending or descending order, respectively.
Setting sort = TRUE
is the same as sort = "ascending"
.
Plotting Bayes factors: Sort pie-slices by posterior probability (descending)?
For models with multiple components (like fixed and random,
count and zero-inflated), defines the number of columns for the
panel-layout. If NULL
, a single, integrated plot is shown.
Character indicating the type of plot. Only applies for model parameters from meta-analysis objects (e.g. metafor).
Logical. If TRUE
, for meta-analysis objects, point
size will be adjusted according to the study-weights.
Logical. If TRUE
, text labels are displayed.
Should the point estimate of each parameter be shown?
(default: TRUE
)
Should the compatibility interval(s) of each parameter
be shown? (default: TRUE
)
Should the compatibility density (i.e., posterior,
bootstrap, or confidence density) of each parameter be shown?
(default: FALSE
)
Should the "direction" of coefficients (e.g., positive
or negative coefficients) be highlighted using different colors?
(default: TRUE
)
Should exponentiated coefficients (e.g., odds-ratios) be
plotted on a log scale? (default: FALSE
)
Arguments passed to or from other methods.
The original data used to create this object. Can be a statistical model.
Character indicating which component of the model should be plotted.
Numeric, threshold at which value coefficients will be displayed.
Numeric, threshold at which value p-values will be displayed.
Logical, whether confidence intervals should be added to the plot.
library(parameters)
m <- lm(mpg ~ wt + cyl + gear + disp, data = mtcars)
result <- model_parameters(m)
result
plot(result)
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