Reproducibility in Machine Learning-Driven Research
Abstract
Research is facing a reproducibility crisis, in which the results and findings of many studies are difficult or even impossible to reproduce. This is also the case in machine learning (ML) and artificial intelligence (AI) research. Often, this is the case due to unpublished data and/or source-code, and due to sensitivity to ML training conditions. Although different solutions to address this issue are discussed in the research community such as using ML platforms, the level of reproducibility in ML-driven research is not increasing substantially. Therefore, in this mini survey, we review the literature on reproducibility in ML-driven research with three main aims: (i) reflect on the current situation of ML reproducibility in various research fields, (ii) identify reproducibility issues and barriers that exist in these research fields applying ML, and (iii) identify potential drivers such as tools, practices, and interventions that support ML reproducibility. With this, we hope to contribute to decisions on the viability of different solutions for supporting ML reproducibility.
Cite
@article{arxiv.2307.10320,
title = {Reproducibility in Machine Learning-Driven Research},
author = {Harald Semmelrock and Simone Kopeinik and Dieter Theiler and Tony Ross-Hellauer and Dominik Kowald},
journal= {arXiv preprint arXiv:2307.10320},
year = {2023}
}
Comments
This research is supported by the Horizon Europe project TIER2 under grant agreement No 101094817