2024
DOI: 10.1017/s0140525x24000086
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Bayes beyond the predictive distribution

Anna Székely,
Gergő Orbán

Abstract: Binz et al. argue that meta-learned models offer a new paradigm to study human cognition. Meta-learned models are proposed as alternatives to Bayesian models based on their capability to learn identical posterior predictive distributions. In our commentary, we highlight several arguments that reach beyond a predictive distribution-based comparison, offering new perspectives to evaluate the advantages of these modeling paradigms.

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