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markdoc: Literate programming in Stata

Author

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  • E. F. Haghish

    (University of Freiburg)

Abstract

Rigorous documentation of the analysis plan, procedure, and computer codes enhances the comprehensibility and transparency of data analysis. Documentation is particularly critical when the codes and data are meant to be publicly shared and examined by the scientific community to evaluate the analysis or adapt the results. The popular approach for documenting computer codes is known as literate programming, which requires preparing a trilingual script file that includes a programming language for running the data analysis, a human language for documentation, and a markup language for typesetting the document. In this article, I introduce markdoc, a software package for interactive literate programming and generating dynamic-analysis documents in Stata. markdoc recognizes Markdown, LATEX, and HTML markup languages and can export documents in several formats, such as PDF, Microsoft Office .docx, OpenOffice and LibreOffice .odt, LATEX, HTML, ePub, and Markdown. Copyright 2016 by StataCorp LP.

Suggested Citation

  • E. F. Haghish, 2016. "markdoc: Literate programming in Stata," Stata Journal, StataCorp LP, vol. 16(4), pages 964-988, December.
  • Handle: RePEc:tsj:stataj:v:16:y:2016:i:4:p:964-988
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    Citations

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    Cited by:

    1. Valérie Orozco & Christophe Bontemps & Élise Maigné & Virginie Piguet & Annie Hofstetter & Anne Marie Lacroix & Fabrice Levert & Jean-Marc Rousselle, 2017. "How to make a pie? Reproducible Research for Empirical Economics & Econometrics," Post-Print hal-01939942, HAL.
    2. Sergio Correia & Matthew P. Seay, 2023. "require: Package dependencies for reproducible research," Papers 2309.11058, arXiv.org, revised Apr 2024.
    3. Valérie Orozco & Christophe Bontemps & Elise Maigné & Virginie Piguet & Annie Hofstetter & Anne Lacroix & Fabrice Levert & Jean‐Marc Rousselle, 2020. "How To Make A Pie: Reproducible Research For Empirical Economics And Econometrics," Journal of Economic Surveys, Wiley Blackwell, vol. 34(5), pages 1134-1169, December.
    4. Ben Jann, 2022. "sttex – a new dynamic document command for Stata and LaTeX," London Stata Conference 2022 14, Stata Users Group.

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