Saved in:
Bibliographic Details
Main Authors: Momeni, Fakhri, Sajid, Sarah, Kiesel, Johannes
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2602.12747
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866910038675685376
author Momeni, Fakhri
Sajid, Sarah
Kiesel, Johannes
author_facet Momeni, Fakhri
Sajid, Sarah
Kiesel, Johannes
contents Reproducibility remains a central challenge in computational social science, where complex workflows, evolving software ecosystems, and inconsistent documentation hinder researchers ability to re-execute published methods. This study presents a systematic evaluation of reproducibility across three conditions: uncurated documentation, curated documentation, and curated documentation paired with a preset execution environment. Using 47 usability test sessions, we combine behavioral performance indicators (success rates, task time, and error profiles) with questionnaire data and thematic analysis to identify technical and conceptual barriers to reproducibility. Curated documentation substantially reduced repository-level errors and improved users ability to interpret method outputs. Standardizing the execution environment further improved reproducibility, yielding the highest success rate and shortest task completion times. Across conditions, participants frequently relied on AI tools for troubleshooting, often enabling independent resolution of issues without facilitator intervention. Our findings demonstrate that reproducibility barriers are multi-layered and require coordinated improvements in documentation quality, environment stability, and conceptual clarity. We discuss implications for the design of reproducibility platforms and infrastructure in computational social science.
format Preprint
id arxiv_https___arxiv_org_abs_2602_12747
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle From Guidelines to Practice: Evaluating the Reproducibility of Methods in Computational Social Science
Momeni, Fakhri
Sajid, Sarah
Kiesel, Johannes
Human-Computer Interaction
Reproducibility remains a central challenge in computational social science, where complex workflows, evolving software ecosystems, and inconsistent documentation hinder researchers ability to re-execute published methods. This study presents a systematic evaluation of reproducibility across three conditions: uncurated documentation, curated documentation, and curated documentation paired with a preset execution environment. Using 47 usability test sessions, we combine behavioral performance indicators (success rates, task time, and error profiles) with questionnaire data and thematic analysis to identify technical and conceptual barriers to reproducibility. Curated documentation substantially reduced repository-level errors and improved users ability to interpret method outputs. Standardizing the execution environment further improved reproducibility, yielding the highest success rate and shortest task completion times. Across conditions, participants frequently relied on AI tools for troubleshooting, often enabling independent resolution of issues without facilitator intervention. Our findings demonstrate that reproducibility barriers are multi-layered and require coordinated improvements in documentation quality, environment stability, and conceptual clarity. We discuss implications for the design of reproducibility platforms and infrastructure in computational social science.
title From Guidelines to Practice: Evaluating the Reproducibility of Methods in Computational Social Science
topic Human-Computer Interaction
url https://arxiv.org/abs/2602.12747