Towards a cross-level understanding of Bayesian inference in the brain

Perception emerges from unconscious probabilistic inference, which guides behaviour in our ubiquitously uncertain environment. Bayesian decision theory is a prominent computational model that describes how people make rational decisions using noisy and ambiguous sensory observations. However, critic...

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Bibliographic Details
Published inNeuroscience and biobehavioral reviews Vol. 137; p. 104649
Main Authors Lin, Chin-Hsuan Sophie, Garrido, Marta I.
Format Journal Article
LanguageEnglish
Published United States Elsevier Ltd 01.06.2022
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Summary:Perception emerges from unconscious probabilistic inference, which guides behaviour in our ubiquitously uncertain environment. Bayesian decision theory is a prominent computational model that describes how people make rational decisions using noisy and ambiguous sensory observations. However, critical questions have been raised about the validity of the Bayesian framework in explaining the mental process of inference. Firstly, some natural behaviours deviate from Bayesian optimum. Secondly, the neural mechanisms that support Bayesian computations in the brain are yet to be understood. Taking Marr’s cross level approach, we review the recent progress made in addressing these challenges. We first review studies that combined behavioural paradigms and modelling approaches to explain both optimal and suboptimal behaviours. Next, we evaluate the theoretical advances and the current evidence for ecologically feasible algorithms and neural implementations in the brain, which may enable probabilistic inference. We argue that this cross-level approach is necessary for the worthwhile pursuit to uncover mechanistic accounts of human behaviour. •Real-life behaviour can be described as Bayesian inference with imperfect execution.•Bayesian-approximation algorithms explain sources of behavioural suboptimality.•Approximation algorithms inspire neural implementations.•Biologically feasible neural coding schemes constrain algorithms and behaviour.•Mechanistic accounts emerge from top-down and bottom-up integration of Marr’s levels.
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ISSN:0149-7634
1873-7528
DOI:10.1016/j.neubiorev.2022.104649