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cadolph at uw dot edu



Replication Data                                             *Corresponding author.

Policy Design and Public Support for Carbon Tax: Evidence from a 2018 U.S. National Online Survey Experiment, Public Administration, Forthcoming.

Version 1.0, March 2020 (publication version)

Nives Dolšak, Christopher Adolph, and Aseem Prakash

Dolšak, Adolph, and Prakash (forthcoming) use a survey experiment to estimate the effect of different spending plans on public support for carbon tax. We use ordered probit models to estimate Sample Average Treatment Effects (SATEs) under each spending frame, as well as differences in SATEs across income and partisan groupings (see Dolšak, Adolph, and Prakash 2020 for further details). The main results of the paper are shown in Figures 1, 2, and 3. Replication data to reproduce these figures is available here , and a codebook is forthcoming. Replication scripts for each figure and an R helper file are available here .


The Global Diffusion of Environmental Clubs: How Pressure from Importing Countries Supports The Chemical Industry’s Responsible Care Program, World Development, 2020, Vol. 127. March.

Version 1.0, December 2019 (publication version)

Ellen Holtmaat*, Christopher Adolph, and Aseem Prakash

Holtmaat, Adolph, and Prakash (2020) examine the adoption of the Responsible Care program at by national chemical industry associations using a Cox proportional hazards model (see Holtmaat, Adolph, and Prakash 2020 for further details). The main results of the paper are shown in Figures 3 and 4. Replication data to reproduce these figures is available here , and a codebook is forthcoming. The complete replication code, including an R helper file, is available here . Replicators should begin by exploring the replicateHAP.r command script.


Bankers, Bureaucrats, and Central Bank Politics: The Myth of Neutrality, Cambridge University Press, 2013.

Version 0.1, May 2013

Christopher Adolph*

The zip file above contains data (in csv format) and a note explaining replication instructions and variable coding; the codebook can also be found here in .

Note: This entry will eventually contain complete replication data for all chapters of BBC. For the moment, replication data  and notes  are only available for the second part of Chapter 4 (regression models of FOMC members’ dissenting votes and ideal interest rates). If you have urgent need of data for other chapters, please contact me.


Allocation of Authority in European Health Policy, Social Science and Medicine, 2012, Vol. 75(9): 1595–1603.

Version 1.0, August 2012 (publication version)

Christopher Adolph*, Scott L. Greer, and Elize Massard da Fonseca

Adolph, Greer, and Massard (2012; hereinafter agm) comprehensively account for the allocation of authority for various areas and instruments of health policy to different levels of government, and use a Bayesian multilevel multinomial logit model to explore how economic and political forces shape these allocations of authority (see Adolph, Greer, and Massard 2012 for further details). The agm data is available here , and a codebook is forthcoming. The complete replication code, including all R and WinBUGS helper files and intermediate estimation results, is available here . Replicators should begin by exploring the aahp.r command script.


Getting Ahead in the Communist Party: Explaining the Advancement of Central Committee Members in China, American Political Science Review, 2012, Vol. 106(1).

Version 1.0, March 2012 (publication version)

Victor Shih, Christopher Adolph*, and Mingxing Liu

Shih, Adolph, and Liu (2012; hereinafter sal) use original data from Shih, Shan, and Liu (2008; archived below) to examine the relationship between partially observed ranks in the Chinese Communist Party (ccp) and various individual-level covariates describing official’s demographics, education, past performance, and factional ties (see Shih, Adolph, and Liu 2012 for further details). This page archives replication data and R scripts for the baseline Bayesian partial rank models estimated in this article.

sal separately analyzed data from the 12th, 13th, 14th, 15th and 16th Party Congresses; these data are available in five comma-separated variable files. Details and replication scripts for the construction of these files from the underlying Shih, Shan, and Liu data are available on request.


  • 12th Party Congress Data   
  • 13th Party Congress Data   
  • 14th Party Congress Data   
  • 15th Party Congress Data   
  • 16th Party Congress Data   
  • Codebook:  Coming soon.

Before you replicate the main results in sal, you will need the above data, an installation of R version 2.12.2 or higher, a number of packages available from cran (specifically, car, RColorBrewer, and WhatIf, as well as many dependencies), and the partialrank and tile packages (available from the Software page of this website).

To replicate the baseline analyses presented in Figures 1 through 3 of sal, you will first need to run these R scripts, which estimate the model and quantities of interest. I recommend creating a separate folder to contain the code, data, and output for each run; this folder must also contain the two helper scripts listed below. The analysis scripts will take some time to run even on a fast processor; half a day each would not be unusual.


  • 12th Party Congress analysis   
  • 13th Party Congress analysis   
  • 14th Party Congress analysis   
  • 15th Party Congress analysis   
  • 16th Party Congress analysis   
  • Counterfactual helper   
  • Prediction helper   

After running the analysis scripts, you can recreate (approximations) of Figures 2 and 3 using the scripts below. Note that you will need to modify the graphing scripts to point to the correct folders containing your results from the analysis scripts.


  • Make Figure 2 (baseline model results over time)   
  • Make Figure 3 (age-tenure interactions)   

To obtain replication materials for the robustness checks (including the multiple imputation, factor analyses, and time series models discussed in the Web Appendix to sal), or if you encounter any problems with these replication scripts, please contact the corresponding author.


Stand-alone Data                                             *Corresponding author.

Biographical Data of Central Committee Members: First to Sixteenth Party Congress.

version 1.0, January 2008

Victor Shih*, Wei Shan, and Mingxing Liu

Included in the above zip file are the data in Excel format and a codebook in pdf.




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CSSS Center for Statistics and the Social Sciences link

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