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Bayes,predictive processing,and the cognitive architecture of motor control
Affiliation:1. Institute of Psychology, University of Tartu, Tartu, Estonia;2. Doctoral School of Behavioural, Social and Health Sciences, Tartu, Estonia;1. School of Health and Society, University of Salford, Salford, UK;2. Department of Psychology, Bournemouth University, Poole, UK;1. Faculty of Philosophy, Ludwig Maximilian University, Munich, Germany;2. Munich Center for Neuroscience, Ludwig Maximilian University, Munich, Germany;3. Institute of Philosophy, School of Advanced Study, University of London, London, UK;4. Graduate School in Neuroscience, Ludwig Maximilian University, Munich, Germany
Abstract:Despite their popularity, relatively scant attention has been paid to the upshot of Bayesian and predictive processing models of cognition for views of overall cognitive architecture. Many of these models are hierarchical; they posit generative models at multiple distinct “levels,” whose job is to predict the consequences of sensory input at lower levels. I articulate one possible position that could be implied by these models, namely, that there is a continuous hierarchy of perception, cognition, and action control comprising levels of generative models. I argue that this view is not entailed by a general Bayesian/predictive processing outlook. Bayesian approaches are compatible with distinct formats of mental representation. Focusing on Bayesian approaches to motor control, I argue that the junctures between different types of mental representation are places where the transitivity of hierarchical prediction may be broken, and I consider the upshot of this conclusion for broader discussions of cognitive architecture.
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