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Reproducible AutoML: An Assessment of Research Reproducibility of No-Code AutoML Tools

In: Artificial Intelligence, Data, and Decision-Making

Author

Listed:
  • Sabrina Pletzl

    (Graz University of Technology, Computational Social Systems)

  • Armin Haberl

    (University of Graz, Business Analytics and Data Science Center)

  • Tony Ross-Hellauer

    (Graz University of Technology, Institute of Interactive Systems and Data Science)

  • Stefan Thalmann

    (University of Graz, Business Analytics and Data Science Center)

Abstract

Technical advances in machine learning (ML) and artificial intelligence (AI) are shaping the transformation in organisations, society and research. Yet, adoption lags behind as implementation is costly and requires experts which are scarce on the market. Automated ML (autoML) promises to overcome these barriers and help to democratize ML by empowering domain specialists to develop ML models in an easy and cheap way. However, the usage of autoML by non-experts in science raises concerns regarding reproducibility, undermining research credibility. This paper examines the extent to which users without in-depth ML knowledge are supported by no-code autoML tools in ensuring research reproducibility. The results of this study uncover human-related and tool-related opportunities and challenges. Addressing these requires a multifaceted design-oriented approach that incorporates open science principles. In this way, the full potential of no-code autoML tools can be realized while ensuring reproducibility and ultimately the credibility of research.

Suggested Citation

  • Sabrina Pletzl & Armin Haberl & Tony Ross-Hellauer & Stefan Thalmann, 2026. "Reproducible AutoML: An Assessment of Research Reproducibility of No-Code AutoML Tools," Lecture Notes in Information Systems and Organization, in: Christoph M. Flath & Gunther Gust & Frédéric Thiesse & Axel Winkelmann (ed.), Artificial Intelligence, Data, and Decision-Making, pages 113-128, Springer.
  • Handle: RePEc:spr:lnichp:978-3-032-08480-4_8
    DOI: 10.1007/978-3-032-08480-4_8
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