Improving Reproducibility in Computational Social Science with the Methods Hub

Authors

  • Arnim Bleier GESIS - Leibniz Institute for the Social Sciences
  • Johannes Kiesel GESIS - Leibniz Institute for the Social Sciences
  • Christina Viehmann GESIS - Leibniz Institute for the Social Sciences
  • Felix Victor Münch GESIS - Leibniz Institute for the Social Sciences
  • Chung-hong Chan GESIS - Leibniz Institute for the Social Sciences
  • Raniere Costa da Silva GESIS - Leibniz Institute for the Social Sciences
  • Ahrabhi Kathirgamalingam GESIS - Leibniz Institute for the Social Sciences
  • Po-Chun Chang GESIS - Leibniz Institute for the Social Sciences
  • Muhammad Taimoor Khan GESIS - Leibniz Institute for the Social Sciences
  • Stephan Linzbach GESIS - Leibniz Institute for the Social Sciences
  • Fakhri Momeni GESIS - Leibniz Institute for the Social Sciences
  • Ran Yu GESIS - Leibniz Institute for the Social Sciences
  • Stefan Dietze GESIS - Leibniz Institute for the Social Sciences
  • Claudia Wagner GESIS - Leibniz Institute for the Social Sciences

DOI:

https://doi.org/10.1609/icwsm.v20i1.42804

Abstract

Computational methods have become central to contemporary social science research, ranging from classical statistical modeling and simulation to large-scale computational social science enabled by organic data. While these developments rely on increasingly complex and compute-intensive analysis pipelines, reproducibility remains a major challenge. The Methods Hub is a community-driven service developed at GESIS to address this gap by enabling reproducible, executable, and well-documented computational methods and tutorials tailored to the needs of social scientists. It combines curated content, persistent identifiers, and seamless integration with interactive execution environments, lowering technical barriers while promoting best practices in open and reproducible science. In our ICWSM 2026 demonstration, we will show how to submit computational methods to the Methods Hub (methodshub.gesis.org) and how the editorial workflow helps make contributors’ work more reusable, executable, and accessible to a wider audience.

Downloads

Published

2026-05-25

How to Cite

Bleier, A., Kiesel, J., Viehmann, C., Münch, F. V., Chan, C.- hong, Costa da Silva, R., … Wagner, C. (2026). Improving Reproducibility in Computational Social Science with the Methods Hub. Proceedings of the International AAAI Conference on Web and Social Media, 20(1), 3038–3041. https://doi.org/10.1609/icwsm.v20i1.42804