cond_effect | R Documentation |
Compute the conditional effects in a moderated regression model.
cond_effect(
output,
x = NULL,
w = NULL,
w_method = c("sd", "percentile"),
w_percentiles = c(0.16, 0.5, 0.84),
w_sd_to_percentiles = NA,
w_from_mean_in_sd = 1,
w_values = NULL
)
cond_effect_boot(
output,
x = NULL,
w = NULL,
...,
conf = 0.95,
nboot = 100,
boot_args = NULL,
save_boot_est = TRUE,
full_output = FALSE,
do_boot = TRUE
)
output |
The output from |
x |
The focal variable (independent variable), that is, the variable with its effect on the outcome variable (dependent) being moderated. It must be a numeric variable. |
w |
The moderator. Both numeric variables and categorical variables (character or factor) are supported. |
w_method |
How to define "low", "medium", and "high" for the moderator
levels.
Default is in terms of mean and
standard deviation (SD) of the moderator, |
w_percentiles |
If |
w_sd_to_percentiles |
If |
w_from_mean_in_sd |
How many SD from mean is used to define
"low" and
"high" for the moderator. Default is 1.
Ignored if |
w_values |
The values of |
... |
Arguments to be passed to |
conf |
The level of confidence for the confidence interval. Default is .95, to get 95% confidence intervals. |
nboot |
The number of bootstrap samples. Default is 100. |
boot_args |
A named list of arguments to be passed to |
save_boot_est |
If |
full_output |
Whether the full output from |
do_boot |
Whether bootstrapping confidence intervals will be formed.
Default is |
cond_effect()
uses the centering approach to find the conditional
effect of the focal variable. For each level of the moderator, the value for
this level is subtracted from the moderator scores, and the model is
fitted to the modified data.
The coefficient of the focal variable is then the conditional effect of the
focal variable when the moderator's score is equal this value.
cond_effect_boot()
function is a wrapper of cond_effect()
.
It calls cond_effect()
once for each bootstrap sample, and then computes the nonparametric
bootstrap percentile confidence intervals (Cheung, Cheung, Lau, Hui,
& Vong, 2022). If the output object is the output of std_selected()
or std_selected_boot()
, in which mean-centering and/or standardization
have been conducted, they will be repeated in each bootstrap sample.
Therefore, like std_selected_boot()
, it can be used for form
nonparametric bootstrap confidence intervals for standardized
effects, though cond_effect_boot()
does this for the standardized
conditional effects.
This function ignores bootstrapping done by std_selected_boot()
. It will
do its own bootstrapping.
If do_boot
is FALSE
, then the object it returns is identical to that
by cond_effect()
.
This function intentionally does not have an argument for setting the seed
for
random number. Users are recommended to set the seed, e.g., using
set.seed()
before calling it, to ensure reproducibility.
cond_effect()
returns a data-frame-like object of the conditional effects.
The class is
cond_effect
and the print method will print additional information of
the conditional effects. Additional information is stored in the
following attributes:
call
: The original call.
output
: The output
object, such as the output from lm()
.
x
, y
, and w
: The three variables used to compute the conditional
effects: focal variable (x
), outcome variable (y
),
and the moderator (w
).
w_method
: The method used to determine the values of the moderator
at the selected levels.
w_percentiles
The percentiles to use if w_method
= "percentile"
.
w_sd_to_percentiles
: If not equal to NA
, this is a scalar, the
number of standard deviation from the mean used to
determine the percentiles for the "low" and "high"
levels of the moderator.
w_from_mean_in_sd
: The number of SD above or below the mean, for
determining the "low" and "high" levels of the
moderator if w_method
is "sd"
.
w_empirical_percentiles
: The actual percentile levels in the dataset
for the selected
levels of the moderator. A numeric vector.
w_empirical_z
: The actual distance from the mean, in SD, of each
selected level of the moderator. A numeric vector.
y_standardized
, x_standardized
, and w_standardized
: Each of them
is a logical scalar, indicating whether the outcome
variable, focal variable, and moderator are standardized.
cond_effect_boot()
also returns a data-frame-like object of the
conditional effects of the class
cond_effect
, with additional information from the bootstrapping stored
in these attributes:
boot_ci
: A data frame of the bootstrap confidence intervals of the
conditional effects.
nboot
: The number of bootstrap samples requested.
conf
: The level of confidence, in proportion.
boot_est
: A matrix of the bootstrap estimates of the conditional effects.
The number of rows equal to nboot
, and the number of columns
equal to the number of levels of the moderator.
cond_effect_boot_call
: The call to cond_effect_boot()
.
boot_out
: If available, the original output from boot::boot()
.
cond_effect_boot()
: A wrapper of cond_effect()
that forms
nonparametric bootstrap confidence intervals.
Shu Fai Cheung https://orcid.org/0000-0002-9871-9448
# Load a sample data set
dat <- test_x_1_w_1_v_1_cat1_n_500
# Do a moderated regression by lm
lm_raw <- lm(dv ~ iv*mod + v1 + cat1, dat)
summary(lm_raw)
cond_effect(lm_raw, x = iv, w = mod)
lm_std <- std_selected(lm_raw, to_standardize = ~ iv + mod)
cond_effect(lm_std, x = iv, w = mod)
# Categorical moderator
lm_cat <- lm(dv ~ iv*cat1 + v1, dat)
summary(lm_cat)
cond_effect(lm_cat, x = iv, w = cat1)
# Load a sample data set
dat <- test_x_1_w_1_v_1_cat1_n_500
# Do a moderated regression by lm
lm_raw <- lm(dv ~ iv*mod + v1 + cat1, dat)
summary(lm_raw)
lm_std <- std_selected(lm_raw, to_standardize = ~ iv + mod)
cond_effect(lm_std, x = iv, w = mod)
# Form nonparametric bootstrap confidence intervals
# Use 2000 or even 5000 for nboot in real research
out <- cond_effect_boot(lm_std, x = iv, w = mod, nboot = 50)
out
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.