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A Siren Song of Open Source Reproducibility

2022-04-09 03:06:40
Edward Raff, Andrew L. Farris

Abstract

As reproducibility becomes a greater concern, conferences have largely converged to a strategy of asking reviewers to indicate whether code was attached to a submission. This is part of a larger trend of taking action based on assumed ideals, without studying if those actions will yield the desired outcome. Our argument is that this focus on code for replication is misguided if we want to improve the state of reproducible research. This focus can be harmful -- we should not force code to be submitted. There is a lack of evidence for effective actions taken by conferences to encourage and reward reproducibility. We argue that venues must take more action to advance reproducible machine learning research today.

Abstract (translated)

URL

https://arxiv.org/abs/2204.04372

PDF

https://arxiv.org/pdf/2204.04372.pdf


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