The worst of both worlds: A comparative analysis of errors in learning from data in psychology and machine learning
Jessica Hullman, Sayash Kapoor, Priyanka Nanayakkara, Andrew Gelman,, and Arvind Narayanan

TL;DR
This paper compares errors in data-driven learning in psychology and machine learning, highlighting shared issues like overreliance on theory and untestable claims, and emphasizes understanding limitations to improve reproducibility.
Contribution
It provides a comparative analysis of reproducibility concerns in psychology and ML, identifying common themes and discussing implications for research practices.
Findings
Errors often stem from unacknowledged variance sources
Optimizing accuracy with large datasets can obscure true data processes
Misdiagnosed errors risk misleading conclusions
Abstract
Recent arguments that machine learning (ML) is facing a reproducibility and replication crisis suggest that some published claims in ML research cannot be taken at face value. These concerns inspire analogies to the replication crisis affecting the social and medical sciences. They also inspire calls for the integration of statistical approaches to causal inference and predictive modeling. A deeper understanding of what reproducibility concerns in supervised ML research have in common with the replication crisis in experimental science puts the new concerns in perspective, and helps researchers avoid "the worst of both worlds," where ML researchers begin borrowing methodologies from explanatory modeling without understanding their limitations and vice versa. We contribute a comparative analysis of concerns about inductive learning that arise in causal attribution as exemplified in…
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