indirect_effects_from_list {manymome} | R Documentation |
Coefficient Table of an 'indirect_list' Class Object
Description
Create a coefficient table
for the point estimates and
confidence intervals (if available)
in the
output of many_indirect_effects()
.
Usage
indirect_effects_from_list(object, add_sig = TRUE, pvalue = FALSE, se = FALSE)
Arguments
object |
The output of
|
add_sig |
Whether a column
of significance test results
will be added. Default is |
pvalue |
Logical. If |
se |
Logical. If |
Details
If bootstrapping confidence interval was requested, this method has the option to add p-values computed by the method presented in Asparouhov and Muthén (2021). Note that these p-values is asymmetric bootstrap p-values based on the distribution of the bootstrap estimates. They are not computed based on the distribution under the null hypothesis.
For a p-value of a, it means that a 100(1 - a)% bootstrapping confidence interval will have one of its limits equal to 0. A confidence interval with a higher confidence level will include zero, while a confidence interval with a lower confidence level will exclude zero.
Value
A data frame with the
indirect effect estimates and
confidence intervals (if available).
It also has A string column, "Sig"
,
for #' significant test results
if add_sig
is TRUE
and
confidence intervals are available.
References
Asparouhov, A., & Muthén, B. (2021). Bootstrap p-value computation. Retrieved from https://www.statmodel.com/download/FAQ-Bootstrap%20-%20Pvalue.pdf
See Also
Examples
library(lavaan)
data(data_serial_parallel)
mod <-
"
m11 ~ x + c1 + c2
m12 ~ m11 + x + c1 + c2
m2 ~ x + c1 + c2
y ~ m12 + m2 + m11 + x + c1 + c2
"
fit <- sem(mod, data_serial_parallel,
fixed.x = FALSE)
# All indirect paths from x to y
paths <- all_indirect_paths(fit,
x = "x",
y = "y")
paths
# Indirect effect estimates
out <- many_indirect_effects(paths,
fit = fit)
out
# Create a data frame of the indirect effect estimates
out_df <- indirect_effects_from_list(out)
out_df