The {fwildclusterboot}
package implements multiple fast wild cluster
bootstrap algorithms as developed in Roodman et al
(2019) and
MacKinnon, Nielsen & Webb
(2022).
Via the
JuliaConnectoR,
{fwildclusterboot}
further ports functionality of
WildBootTests.jl - which
provides an even faster implementation of the wild cluster bootstrap for
OLS and supports the WRE bootstrap for IV and tests of multiple joint
hypotheses.
The package’s central function is boottest()
. It allows to test
univariate hypotheses using a wild cluster bootstrap at extreme speed:
via the ‘fast’ algorithm, it is possible to run a wild cluster bootstrap
with $B = 100.000$ iterations in less than a second!
{fwildclusterboot}
supports the following features:
Additional features are provided through WildBootTests.jl
:
{fwildclusterboot}
supports the following models:
lm
(from stats), fixest
(from fixest), felm
from (lfe)ivreg
(from ivreg).You can install compiled versions of{fwildclusterboot}
from CRAN
(compiled), R-universe (compiled) or github by following one of the
steps below:
# from CRAN
install.packages("fwildclusterboot")
# from r-universe (windows & mac, compiled R > 4.0 required)
install.packages('fwildclusterboot', repos ='https://s3alfisc.r-universe.dev')
# dev version from github
# note: installation requires Rtools
library(devtools)
install_github("s3alfisc/fwildclusterboot")
boottest()
functionFor a longer introduction to {fwildclusterboot}
, take a look at the
vignette.
library(fwildclusterboot)
# set seed via dqset.seed for engine = "R" & Rademacher, Webb & Normal weights
dqrng::dqset.seed(2352342)
# set 'familiar' seed for all other algorithms and weight types
set.seed(23325)
data(voters)
# fit the model via fixest::feols(), lfe::felm() or stats::lm()
lm_fit <- lm(proposition_vote ~ treatment + log_income + as.factor(Q1_immigration) + as.factor(Q2_defense), data = voters)
# bootstrap inference via boottest()
lm_boot <- boottest(lm_fit, clustid = c("group_id1"), B = 9999, param = "treatment")
summary(lm_boot)
#> boottest.lm(object = lm_fit, param = "treatment", B = 9999, clustid = c("group_id1"))
#>
#> Hypothesis: 1*treatment = 0
#> Observations: 300
#> Bootstr. Type: rademacher
#> Clustering: 1-way
#> Confidence Sets: 95%
#> Number of Clusters: 40
#>
#> term estimate statistic p.value conf.low conf.high
#> 1 1*treatment = 0 0.079 3.983 0.001 0.039 0.119
If you are in R
, you can simply run the following command to get the
BibTeX citation for {fwildclusterboot}
:
citation("fwildclusterboot")
#>
#> To cite 'fwildclusterboot' in publications use:
#>
#> Fischer & Roodman. (2021). fwildclusterboot: Fast Wild Cluster
#> Bootstrap Inference for Linear Regression Models. Available from
#> https://cran.r-project.org/package=fwildclusterboot.
#>
#> A BibTeX entry for LaTeX users is
#>
#> @Misc{,
#> title = {fwildclusterboot: Fast Wild Cluster Bootstrap Inference for Linear Regression Models (Version 0.14.0)},
#> author = {Alexander Fischer and David Roodman},
#> year = {2021},
#> url = {https://cran.r-project.org/package=fwildclusterboot},
#> }
Alternatively, if you prefer to cite the “Fast & Wild” paper by Roodman
et al, it would be great if you mentioned {fwildclusterboot}
in a
footnote =) !
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