This page explains the details of estimating optimization-based weights (also known as stable balancing weights) by setting method = "optweight"
in the call to weightit()
or weightitMSM()
. This method can be used with binary, multi-category, and continuous treatments.
In general, this method relies on estimating weights by solving a quadratic programming problem subject to approximate or exact balance constraints. This method relies on optweight::optweight()
from the optweight package.
Because optweight()
offers finer control and uses the same syntax as weightit()
, it is recommended that optweight::optweight()
be used instead of weightit
with method = "optweight"
.
Binary Treatments
For binary treatments, this method estimates the weights using optweight::optweight()
. The following estimands are allowed: ATE, ATT, and ATC. The weights are taken from the output of the optweight
fit object.
Multi-Category Treatments
For multi-category treatments, this method estimates the weights using optweight::optweight()
. The following estimands are allowed: ATE and ATT. The weights are taken from the output of the optweight
fit object.
Continuous Treatments
For binary treatments, this method estimates the weights using optweight::optweight()
. The weights are taken from the output of the optweight
fit object.
Longitudinal Treatments
For longitudinal treatments, optweight()
estimates weights that simultaneously satisfy balance constraints at all time points, so only one model is fit to obtain the weights. Using method = "optweight"
in weightitMSM()
causes is.MSM.method
to be set to TRUE
by default. Setting it to FALSE
will run one model for each time point and multiply the weights together, a method that is not recommended. NOTE: neither use of optimization-based weights with longitudinal treatments has been validated!
Sampling Weights
Sampling weights are supported through s.weights
in all scenarios.
Missing Data
In the presence of missing data, the following value(s) for missing
are allowed:
"ind"
(default)
First, for each variable with missingness, a new missingness indicator variable is created which takes the value 1 if the original covariate is NA
and 0 otherwise. The missingness indicators are added to the model formula as main effects. The missing values in the covariates are then replaced with the covariate medians (this value is arbitrary and does not affect estimation). The weight estimation then proceeds with this new formula and set of covariates. The covariates output in the resulting weightit
object will be the original covariates with the NA
s.
M-estimation
M-estimation is not supported.