method_bart | R Documentation |
This page explains the details of estimating weights from
Bayesian additive regression trees (BART)-based propensity scores by setting
method = "bart"
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 propensity scores using BART and then converting those propensity scores into weights using a formula that depends on the desired estimand. This method relies on \pkgfundbartsbart2 from the dbarts package.
For binary treatments, this method estimates the propensity scores using
\pkgfundbartsbart2. The following estimands are allowed: ATE, ATT, ATC,
ATO, ATM, and ATOS. Weights can also be computed using marginal mean
weighting through stratification for the ATE, ATT, and ATC. See
get_w_from_ps()
for details.
For multi-category treatments, the propensity scores are estimated using
several calls to \pkgfundbartsbart2, one for each treatment group; the
treatment probabilities are not normalized to sum to 1. The following
estimands are allowed: ATE, ATT, ATC, ATO, and ATM. The weights for each
estimand are computed using the standard formulas or those mentioned above.
Weights can also be computed using marginal mean weighting through
stratification for the ATE, ATT, and ATC. See get_w_from_ps()
for details.
w_i = f_A(a_i) / f_{A|X}(a_i)
, where f_A(a_i)
(known as the
stabilization factor) is the unconditional density of treatment evaluated the
observed treatment value and f_{A|X}(a_i)
(known as the generalized
propensity score) is the conditional density of treatment given the
covariates evaluated at the observed value of treatment. The shape of
f_A(.)
and f_{A|X}(.)
is controlled by the density
argument
described below (normal distributions by default), and the predicted values
used for the mean of the conditional density are estimated using BART as
implemented in \pkgfundbartsbart2. Kernel density estimation can be used
instead of assuming a specific density for the numerator and denominator by
setting density = "kernel"
. Other arguments to density()
can be specified
to refine the density estimation parameters.
For longitudinal treatments, the weights are the product of the weights estimated at each time point.
Sampling weights are not supported.
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. 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 is not supported.
BART works by fitting a sum-of-trees model for the treatment or
probability of treatment. The number of trees is determined by the n.trees
argument. Bayesian priors are used for the hyperparameters, so the result is
a posterior distribution of predicted values for each unit. The mean of these
for each unit is taken for use in computing the (generalized) propensity
score. Although the hyperparameters governing the priors can be modified by
supplying arguments to weightit()
that are passed to the BART fitting
function, the default values tend to work well and require little
modification (though the defaults differ for continuous and categorical
treatments; see the \pkgfundbartsbart2 documentation for details). Unlike
many other machine learning methods, no loss function is optimized and the
hyperparameters do not need to be tuned (e.g., using cross-validation),
though performance can benefit from tuning. BART tends to balance sparseness
with flexibility by using very weak learners as the trees, which makes it
suitable for capturing complex functions without specifying a particular
functional form and without overfitting.
BART has a random component, so some work must be done to ensure
reproducibility across runs. See the Reproducibility section at
\pkgfundbartsbart2 for more details. To ensure reproducibility, one can
do one of two things: 1) supply an argument to seed
, which is passed to
dbarts::bart2()
and sets the seed for single- and multi-threaded uses, or
2) call set.seed()
, though this only ensures reproducibility when using
single-threading, which can be requested by setting n.threads = 1
. Note
that to ensure reproducibility on any machine, regardless of the number of
cores available, one should use single-threading and either supply seed
or
call set.seed()
.
All arguments to \pkgfundbartsbart2 can be passed through weightit()
or weightitMSM()
, with the following exceptions:
test
, weights
,subset
, offset.test
are ignored
combine.chains
is always set to TRUE
sampleronly
is always set to FALSE
For continuous treatments only, the following arguments may be supplied:
density
A function corresponding to the conditional density of the treatment. The standardized residuals of the treatment model will be fed through this function to produce the numerator and denominator of the generalized propensity score weights. If blank, dnorm()
is used as recommended by Robins et al. (2000). This can also be supplied as a string containing the name of the function to be called. If the string contains underscores, the call will be split by the underscores and the latter splits will be supplied as arguments to the second argument and beyond. For example, if density = "dt_2"
is specified, the density used will be that of a t-distribution with 2 degrees of freedom. Using a t-distribution can be useful when extreme outcome values are observed (Naimi et al., 2014).
Can also be "kernel"
to use kernel density estimation, which calls density()
to estimate the numerator and denominator densities for the weights. (This used to be requested by setting use.kernel = TRUE
, which is now deprecated.)
bw
, adjust
, kernel
, n
If density = "kernel"
, the arguments to density()
. The defaults are the same as those in density()
except that n
is 10 times the number of units in the sample.
plot
If density = "kernel"
, whether to plot the estimated densities.
obj
When include.obj = TRUE
, the bart2
fit(s) used to generate the predicted values. With multi-category treatments, this will be a list of the fits; otherwise, it will be a single fit. The predicted probabilities used to compute the propensity scores can be extracted using \pkgfun2dbartsbartfitted.
Hill, J., Weiss, C., & Zhai, F. (2011). Challenges With Propensity Score Strategies in a High-Dimensional Setting and a Potential Alternative. Multivariate Behavioral Research, 46(3), 477–513. \Sexpr[results=rd]{tools:::Rd_expr_doi("10.1080/00273171.2011.570161")}
Chipman, H. A., George, E. I., & McCulloch, R. E. (2010). BART: Bayesian additive regression trees. The Annals of Applied Statistics, 4(1), 266–298. \Sexpr[results=rd]{tools:::Rd_expr_doi("10.1214/09-AOAS285")}
Note that many references that deal with BART for causal inference focus on estimating potential outcomes with BART, not the propensity scores, and so are not directly relevant when using BART to estimate propensity scores for weights.
See method_glm
for additional references on propensity score weighting
more generally.
weightit()
, weightitMSM()
, get_w_from_ps()
method_super
for stacking predictions from several machine learning
methods, including BART.
library("cobalt")
data("lalonde", package = "cobalt")
#Balancing covariates between treatment groups (binary)
(W1 <- weightit(treat ~ age + educ + married +
nodegree + re74, data = lalonde,
method = "bart", estimand = "ATT"))
summary(W1)
bal.tab(W1)
#Balancing covariates with respect to race (multi-category)
(W2 <- weightit(race ~ age + educ + married +
nodegree + re74, data = lalonde,
method = "bart", estimand = "ATE"))
summary(W2)
bal.tab(W2)
#Balancing covariates with respect to re75 (continuous)
#assuming t(3) conditional density for treatment
(W3 <- weightit(re75 ~ age + educ + married +
nodegree + re74, data = lalonde,
method = "bart", density = "dt_3"))
summary(W3)
bal.tab(W3)
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