Journal article

Probabilistic models of cognition: exploring representations and inductive biases

TL Griffiths, N Chater, C Kemp, A Perfors, JB Tenenbaum

Trends in Cognitive Sciences | ELSEVIER SCIENCE LONDON | Published : 2010

Abstract

Cognitive science aims to reverse-engineer the mind, and many of the engineering challenges the mind faces involve induction. The probabilistic approach to modeling cognition begins by identifying ideal solutions to these inductive problems. Mental processes are then modeled using algorithms for approximating these solutions, and neural processes are viewed as mechanisms for implementing these algorithms, with the result being a top-down analysis of cognition starting with the function of cognitive processes. Typical connectionist models, by contrast, follow a bottom-up approach, beginning with a characterization of neural mechanisms and exploring what macro-level functional phenomena might ..

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University of Melbourne Researchers