The National Tax Journal encourages authors of empirical papers to provide data and analysis sufficient for replication. Upon acceptance, authors should post the following on NTJ’s Dataverse: - Code and programs that can be used for replication, - Dataset(s) used to run the final models, and - “Readme” files detailing how data and programs are combined to generate the final analysis. Such files should include a description of how intermediate data files were used to create the final dataset. Authors who choose to post replication files for NTJ accepted papers are strongly encouraged to do so prior to submitting final files to the journal office for publication so that the link to the data can be included in the published paper. In that case, the following line (with unique identifier information) should be included at the end of the paper’s acknowledgment note: Data are provided through Dataverse at https://doi.org/XX.XXXX/XXX/XXXXXX
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1 to 10 of 44 Results
Jun 24, 2025
Derby, Elena; Dowd, Connor; Mortenson, Jacob, 2025, "Replication Code for "Statistical Bias in Racial and Ethnic Disparity Estimates Using BIFSG"", https://doi.org/10.7910/DVN/F2HIWR, Harvard Dataverse, V1
This replication package provides code for the data analysis reported in "Statistical Bias in Racial and Ethnic Disparity Estimates Using BIFSG". The majority of data used in this paper comes from administrative tax data and proprietary data from the US Department of Housing and Urban Development. These data were accessed and handled solely by the...
Jun 24, 2025
Coleman, Thomas; Weisbach, David, 2025, "Replication Data for How Much Does U.S. Fiscal System Redistribute?", https://doi.org/10.7910/DVN/M43QLB, Harvard Dataverse, V1, UNF:6:dPMA3GaWtN9Fx/6Mp9YRDA== [fileUNF]
Code and data repository for Coleman-Weisbach paper "How Much Does U.S. Fiscal System Redistribute?"
Jun 17, 2025
St. Clair, Travis; Chan, Sewin; Grace Brang, 2025, "Replication Data for Fiscal Stimulus or Debt Relief: The Effect of Federal Pandemic Aid on State and Local Pensions", https://doi.org/10.7910/DVN/QX8UA1, Harvard Dataverse, V1, UNF:6:8ZD3QS3i4hKaHVWezp3JCQ== [fileUNF]
Replication code and data for Fiscal Stimulus or Debt Relief: The Effect of Federal Pandemic Aid on State and Local Pensions
Jun 17, 2025
Splinter, David; Heiser, Eric; Love, Michael; Mortenson, Jacob, 2025, "Replication Code for The Paycheck Protection Program: Progressivity and Tax Effects", https://doi.org/10.7910/DVN/KK7ESS, Harvard Dataverse, V1, UNF:6:yvlNhrR7GNcBEX8GZGwOMw== [fileUNF]
Replication code for “The Paycheck Protection Program: Progressivity and Tax Effects.” IRS tax data is confidential and cannot be posted.
Jun 5, 2025
Pepin, Gabrielle; TRUSKINOVSKY, YULYA, 2025, "Replication Data for: Not Just for Kids: Child and Dependent Care Credit Benefits for Adult Care", https://doi.org/10.7910/DVN/JEUVG2, Harvard Dataverse, V1
Replication Data for: Not Just for Kids: Child and Dependent Care Credit Benefits for Adult Care
Jun 3, 2025
Splinter, David; Elwell, James; Xu, Lin, 2025, "Replication Code for Advance Tax Credits: Reconciliations and Repayments", https://doi.org/10.7910/DVN/KWOSPW, Harvard Dataverse, V1
Replication code for “Advance Tax Credits: Reconciliations and Repayments.” IRS tax data is confidential and cannot be posted.
May 27, 2025
Byker, Tanya; Patel, Elena; Smith, Kristin, 2025, "Replication Data for "Bridging the Gap: How Emergency Paid Leave Addressed Limited Access and Constraints During the Pandemic"", https://doi.org/10.7910/DVN/CUUQAK, Harvard Dataverse, V1
We provide all program files and detail instructions for how to download the public use data on which we rely to replicate our analysis.
May 21, 2025
Meer, Jonathan; Gentry, Melissa; Clemens, Jeffrey, 2025, "Replication Data for Divergent Paths: Differential Impacts of Minimum Wage Increases on Individuals with Disabilities", https://doi.org/10.7910/DVN/MOVB5X, Harvard Dataverse, V1
Replication data for Divergent Paths: Differential Impacts of Minimum Wage Increases on Individuals with Disabilities
May 14, 2025
Blumenthal, Marsha; Feldman, Naomi; Risch, Max; Reck, Daniel, 2025, "Replication Data for Undeterred: Joel Slemrod and the Evolution of Tax Evasion Research", https://doi.org/10.7910/DVN/PULHTL, Harvard Dataverse, V1
This is the raw data used to generate Figure 1. Collected from Google Scholar.
May 14, 2025
Wilson, Riley, 2025, "Replication Data for: The Self-Employment Effects of the EITC in the Gig Economy", https://doi.org/10.7910/DVN/5YTUUO, Harvard Dataverse, V1, UNF:6:rIXRmFD2nvmS9R9/ZqNhXg== [fileUNF]
This archive contains replication data and code for "The Self-Employment Effects of the EITC in the Gig Economy", published in the National Tax Journal.
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