SEIRLGJun 20, 2024

Reproducibility in Machine Learning-based Research: Overview, Barriers and Drivers

arXiv:2406.14325v383 citations
Originality Synthesis-oriented
AI Analysis

This work tackles the threat of poor reproducibility to trust and integrity in ML research, offering strategies for researchers, but it is incremental as it builds on existing discussions and initiatives.

The paper addresses the reproducibility crisis in machine learning research, highlighting low similarity with original results in reproducibility experiments and proposing a new perspective on barriers and drivers to improve reproducibility.

Many research fields are currently reckoning with issues of poor levels of reproducibility. Some label it a "crisis", and research employing or building Machine Learning (ML) models is no exception. Issues including lack of transparency, data or code, poor adherence to standards, and the sensitivity of ML training conditions mean that many papers are not even reproducible in principle. Where they are, though, reproducibility experiments have found worryingly low degrees of similarity with original results. Despite previous appeals from ML researchers on this topic and various initiatives from conference reproducibility tracks to the ACM's new Emerging Interest Group on Reproducibility and Replicability, we contend that the general community continues to take this issue too lightly. Poor reproducibility threatens trust in and integrity of research results. Therefore, in this article, we lay out a new perspective on the key barriers and drivers (both procedural and technical) to increased reproducibility at various levels (methods, code, data, and experiments). We then map the drivers to the barriers to give concrete advice for strategies for researchers to mitigate reproducibility issues in their own work, to lay out key areas where further research is needed in specific areas, and to further ignite discussion on the threat presented by these urgent issues.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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