LGAIMEAug 15, 2023

REFORMS: Reporting Standards for Machine Learning Based Science

Princeton
arXiv:2308.07832v231 citationsh-index: 36
Originality Incremental advance
AI Analysis

This addresses the issue of credibility and false consensus in scientific research using ML, providing a tool for researchers, referees, and journals to improve transparency and reproducibility.

The paper tackles the problem of validity, reproducibility, and generalizability failures in machine learning-based science by introducing REFORMS, a 32-question checklist and guidelines developed through consensus among 19 researchers across multiple disciplines.

Machine learning (ML) methods are proliferating in scientific research. However, the adoption of these methods has been accompanied by failures of validity, reproducibility, and generalizability. These failures can hinder scientific progress, lead to false consensus around invalid claims, and undermine the credibility of ML-based science. ML methods are often applied and fail in similar ways across disciplines. Motivated by this observation, our goal is to provide clear reporting standards for ML-based science. Drawing from an extensive review of past literature, we present the REFORMS checklist ($\textbf{Re}$porting Standards $\textbf{For}$ $\textbf{M}$achine Learning Based $\textbf{S}$cience). It consists of 32 questions and a paired set of guidelines. REFORMS was developed based on a consensus of 19 researchers across computer science, data science, mathematics, social sciences, and biomedical sciences. REFORMS can serve as a resource for researchers when designing and implementing a study, for referees when reviewing papers, and for journals when enforcing standards for transparency and reproducibility.

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