These functions summarize the weights resulting from a call to optweight
or optweight.svy
. summary
produces summary statistics on the distribution of weights, including their range and variability, and the effective sample size of the weighted sample (computing using the formula in McCaffrey, Rudgeway, & Morral, 2004). plot
creates a histogram of the weights.
# S3 method for optweight
summary(object, top = 5, ignore.s.weights = FALSE, ...)# S3 method for optweightMSM
summary(object, top = 5, ignore.s.weights = FALSE, ...)
# S3 method for optweight.svy
summary(object, top = 5, ignore.s.weights = FALSE, ...)
# S3 method for summary.optweight
print(x, ...)
# S3 method for summary.optweightMSM
print(x, ...)
# S3 method for summary.optweight.svy
print(x, ...)
# S3 method for summary.optweight
plot(x, ...)
An optweight
, optweightMSM
, or optweight.svy
object; the output of a call to optweight
or optweight.svy
.
How many of the largest and smallest weights to display. Default is 5.
Whether or not to ignore sampling weights when computing the weight summary. If FALSE
, the default, the estimated weights will be multiplied by the sampling weights (if any) before values are computed.
A summary.optweight
, summary.optweightMSM
, or summary.optweight.svy
object; the output of a call to summary.optweight
, summary.optweightMSM
, or summary.optweight.svy
.
Additional arguments. For plot
, additional arguments passed to hist
to determine the number of bins, though geom_histogram
from ggplot2 is actually used to create the plot.
For point treatments (i.e., optweight
objects), summary
returns a summary.optweight
object with the following elements:
The range (minimum and maximum) weight for each treatment group.
The units with the greatest weights in each treatment group; how many are included is determined by top
.
The coefficient of variation (standard deviation divided by mean) of the weights in each treatment group and overall. When no sampling weights are used, this is simply the standard deviation of the weights.
The mean absolute deviation of the weights in each treatment group and overall.
The effective sample size for each treatment group before and after weighting.
For longitudinal treatments (i.e., optweightMSM objects), a list of the above elements for each treatment period.
For optweight.svy objects, a list of the above elements but with no treatment group divisions.
plot returns a ggplot object with a histogram displaying the distribution of the estimated weights. If the estimand is the ATT or ATC, only the weights for the non-focal group(s) will be displayed (since the weights for the focal group are all 1). A dotted line is displayed at the mean of the weights (usually 1).
McCaffrey, D. F., Ridgeway, G., & Morral, A. R. (2004). Propensity Score Estimation With Boosted Regression for Evaluating Causal Effects in Observational Studies. Psychological Methods, 9(4), 403<U+2013>425. 10.1037/1082-989X.9.4.403
plot.optweight
for plotting the values of the dual variables.
# NOT RUN {
library("cobalt")
data("lalonde", package = "cobalt")
#Balancing covariates between treatment groups (binary)
(ow1 <- optweight(treat ~ age + educ + married +
nodegree + re74, data = lalonde,
tols = .001,
estimand = "ATT"))
(s <- summary(ow1))
plot(s, breaks = 12)
# }
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