Belief inference for hierarchical hidden states in spatial navigation

Author:

Katayama RisaORCID,Shiraki Ryo,Ishii Shin,Yoshida Wako

Abstract

AbstractUncertainty abounds in the real world, and in environments with multiple layers of unobservable hidden states, decision-making requires resolving uncertainties based on mutual inference. Focusing on a spatial navigation problem, we develop a Tiger maze task that involved simultaneously inferring the local hidden state and the global hidden state from probabilistically uncertain observation. We adopt a Bayesian computational approach by proposing a hierarchical inference model. Applying this to human task behaviour, alongside functional magnetic resonance brain imaging, allows us to separate the neural correlates associated with reinforcement and reassessment of belief in hidden states. The imaging results also suggest that different layers of uncertainty differentially involve the basal ganglia and dorsomedial prefrontal cortex, and that the regions responsible are organised along the rostral axis of these areas according to the type of inference and the level of abstraction of the hidden state, i.e. higher-order state inference involves more anterior parts.

Funder

MEXT | Japan Science and Technology Agency

New Energy and Industrial Technology Development Organization

MEXT | Japan Society for the Promotion of Science

RCUK | Medical Research Council

Wellcome Trust

DH | National Institute for Health Research

Publisher

Springer Science and Business Media LLC

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