This page explains the details of estimating weights from nonparametric covariate balancing propensity scores by setting method = "npcbps"
in the call to weightit
or weightitMSM
. This method can be used with binary, multinomial, and continuous treatments.
In general, this method relies on estimating weights by maximizing the empirical likelihood of the data subject to balance constraints. This method relies on npCBPS
from the CBPS package.
Binary Treatments
For binary treatments, this method estimates the weights using npCBPS
. The ATE is the only estimand allowed. The weights are taken from the output of the npCBPS
fit object.
Multinomial Treatments
For multinomial treatments, this method estimates the weights using npCBPS
. The ATE is the only estimand allowed. The weights are taken from the output of the npCBPS
fit object.
Continuous Treatments
For continuous treatments, this method estimates the weights using npCBPS
. The weights are taken from the output of the npCBPS
fit object.
Longitudinal Treatments
For longitudinal treatments, the weights are the product of the weights estimated at each time point. This is not how CBMSM
in the CBPS package estimates weights for longitudinal treatments.
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 0s (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.