| rdwinselect | R Documentation |
rdwinselect implements a window-selection procedure based on balance
tests for RD designs under local randomization. Specifically, it constructs a
sequence of nested windows around the RD cutoff and reports binomial tests for
the running variable and covariate balance tests for the covariates (if
specified). The recommended window is the largest window around the cutoff
such that the minimum p-value from the balance tests is larger than a
prespecified level for all nested (smaller) windows. By default, the p-values
are calculated using randomization inference methods.
rdwinselect(
R,
X,
cutoff = 0,
obsmin = NULL,
wmin = NULL,
wobs = NULL,
wstep = NULL,
wasymmetric = FALSE,
wmasspoints = FALSE,
dropmissing = FALSE,
nwindows = 10,
statistic = "diffmeans",
p = 0,
evalat = "cutoff",
kernel = "uniform",
approx = FALSE,
level = 0.15,
reps = 1000,
seed = 666,
plot = FALSE,
quietly = FALSE,
obsstep = NULL
)
R |
a vector containing the values of the running variable. |
X |
the matrix of covariates to be used in the balance tests. The matrix is optional, but the recommended window is only provided when at least one covariate is specified. This should be a matrix of size n x k where n is the total sample size and k is the number of covariates. |
cutoff |
the RD cutoff (default is 0). |
obsmin |
the minimum number of observations above and below the cutoff in the smallest window. Default is 10. |
wmin |
the smallest window to be used. |
wobs |
the number of observations to be added on each side of the cutoff at each step. Default is 5. |
wstep |
the increment in window length. |
wasymmetric |
allows for asymmetric windows around the cutoff when |
wmasspoints |
specifies that the running variable is discrete and each masspoint should be used as a window. |
dropmissing |
drop rows with missing values in covariates when calculating windows. |
nwindows |
the number of windows to be used. Default is 10. |
statistic |
the statistic to be used in the balance tests. Allowed options are |
p |
the order of the polynomial for the outcome adjustment model (for covariates). Default is 0. |
evalat |
specifies the point at which the adjusted variable is evaluated. Allowed options are |
kernel |
specifies the type of kernel to use as a weighting scheme. Allowed kernel types are |
approx |
forces the command to conduct the covariate balance tests using a large-sample approximation instead of finite-sample exact randomization inference methods. |
level |
the minimum accepted value of the p-value from the covariate balance tests. Default is .15. |
reps |
the number of replications. Default is 1000. |
seed |
the seed to be used for the randomization tests. |
plot |
draws a scatter plot of the minimum p-value from the covariate balance test against window length. |
quietly |
suppresses output. |
obsstep |
the minimum number of observations to be added on each side of the cutoff for the sequence of fixed-increment nested windows. This option is deprecated and only included for backward compatibility. |
A list containing:
w_left |
left endpoint of the recommended window. |
w_right |
right endpoint of the recommended window. |
wlist_left |
left endpoints of the candidate windows. |
wlist_right |
right endpoints of the candidate windows. |
results |
matrix containing the minimum covariate-balance p-value, selected covariate index, binomial-test p-value, sample sizes below and above the cutoff, and window endpoints for each candidate window. |
summary |
matrix of sample-size summaries by side of the cutoff. |
Matias D. Cattaneo, Princeton University. matias.d.cattaneo@gmail.com
Rocio Titiunik, Princeton University. rocio.titiunik@gmail.com
Gonzalo Vazquez-Bare, UC Santa Barbara. gvazquezbare@gmail.com
Cattaneo, M.D., B. Frandsen and R. Titiunik. (2015). Randomization Inference in the Regression Discontinuity Design: An Application to Party Advantages in the U.S. Senate. Journal of Causal Inference 3(1): 1-24.
Cattaneo, M.D., R. Titiunik and G. Vazquez-Bare. (2016). Inference in Regression Discontinuity Designs under Local Randomization. Stata Journal 16(2): 331-367.
Cattaneo, M.D., R. Titiunik and G. Vazquez-Bare. (2017). Comparing Inference Approaches for RD Designs: A Reexamination of the Effect of Head Start on Child Mortality. Journal of Policy Analysis and Management 36(3): 643-681.
# Toy dataset
set.seed(123)
X <- array(rnorm(200),dim=c(100,2))
R <- X[,1] + X[,2] + rnorm(100)
# Window selection adding 5 observations at each step
# Note: low number of replications to speed up process.
tmp <- rdwinselect(R,X,obsmin=10,wobs=5,nwindows=5,reps=500,quietly=TRUE)
# Window selection setting initial window and step
# The user should increase the number of replications.
tmp <- rdwinselect(R,X,wmin=.5,wstep=.125,reps=500,quietly=TRUE)
# Window selection with approximate (large sample) inference and p-value plot
tmp <- rdwinselect(R,X,wmin=.5,wstep=.125,approx=TRUE,nwindows=20,quietly=TRUE,plot=TRUE)
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