The rdlocrand
package provides Stata and R implementations of statistical inference and graphical procedures for Regression Discontinuity designs employing local randomization methods. It provides point estimators, confidence intervals estimators, binomial manipulation testing, windows selectors, automatic plots, sensitivity analysis, and other related features.
This work was supported in part by the National Science Foundation through grants SES-1357561.
https://rdpackages.github.io/rdlocrand
Please email: rdpackages@googlegroups.com
To install/update in R type:
pip install rdlocrand
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Help: PyPI repository.
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Replication: py-script, senate data.
To install/update in R type:
install.packages('rdlocrand')
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Help: R Manual, CRAN repository.
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Replication: R-script, senate data. R illustration.
To install/update in Stata type:
net install rdlocrand, from(https://raw.githubusercontent.com/rdpackages/rdlocrand/master/stata) replace
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Help: rdrandinf, rdwinselect, rdsensitivity, rdrbounds.
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Replication: do-file, senate data.
For overviews and introductions, see rdpackages website.
- Cattaneo, Titiunik and Vazquez-Bare (2016): Inference in Regression Discontinuity Designs under Local Randomization.
Stata Journal 16(2): 331-367.
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Cattaneo, Frandsen and 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, Titiunik and 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.