Workflow Techniques for the Robust Use of Bayes Factors
Daniel J. Schad, Bruno Nicenboim, Paul-Christian B\"urkner, Michael, Betancourt, Shravan Vasishth

TL;DR
This paper examines the robustness and reliability of Bayes factors in hypothesis testing within cognitive sciences, proposing a workflow to assess their accuracy, stability, and decision-making utility through simulations and practical examples.
Contribution
It introduces a comprehensive workflow for evaluating the robustness of Bayes factors, including simulation-based calibration and stability analysis, addressing gaps in their practical application.
Findings
Bayes factors can be sensitive to data and model assumptions.
Simulation-based calibration reveals potential biases in Bayes factor estimates.
A practical workflow helps researchers assess the reliability of Bayes factors in their analyses.
Abstract
Inferences about hypotheses are ubiquitous in the cognitive sciences. Bayes factors provide one general way to compare different hypotheses by their compatibility with the observed data. Those quantifications can then also be used to choose between hypotheses. While Bayes factors provide an immediate approach to hypothesis testing, they are highly sensitive to details of the data/model assumptions. Moreover it's not clear how straightforwardly this approach can be implemented in practice, and in particular how sensitive it is to the details of the computational implementation. Here, we investigate these questions for Bayes factor analyses in the cognitive sciences. We explain the statistics underlying Bayes factors as a tool for Bayesian inferences and discuss that utility functions are needed for principled decisions on hypotheses. Next, we study how Bayes factors misbehave under…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Scientific Computing and Data Management · Bayesian Modeling and Causal Inference
