Abstract

Categorization is a fundamental ability for efficient behavioral control. It allows organisms to remember the correct responses to categorical cues and not for every stimulus encountered (hence eluding computational cost or complexity), and to generalize appropriate responses to novel stimuli dependant on category assignment. Assuming the brain performs Bayesian inference, based on a generative model of the external world and future goals, we propose a computational model of categorization in which important properties emerge. These properties comprise the ability to infer latent causes of sensory experience, a hierarchical organization of latent causes, and an explicit inclusion of context and action representations. Crucially, these aspects derive from considering the environmental statistics that are relevant to achieve goals, and from the fundamental Bayesian principle that any generative model should be preferred over alternative models based on an accuracy-complexity trade-off. Our account is a step toward elucidating computational principles of categorization and its role within the Bayesian brain hypothesis.

Highlights

  • Adaptive behavior requires mapping single exemplars of stimuli or cues to their classes

  • The former aspect relates to the ability of the generative model to infer reliably the appropriate action, while the second component relates to the number of parameters used to explain observations

  • Categorization is a fundamental faculty of intelligent agents, enabling them to save computational resources and generalize an adaptive behavioral repertoire to novel stimuli (Rosch, 1973; Rosch et al, 1976)

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Summary

A Goal-Directed Bayesian Framework for Categorization

Reviewed by: Francisco Barcelo, University of the Balearic Islands, Spain Giulio Pergola, Università degli Studi di Bari Aldo. Assuming the brain performs Bayesian inference, based on a generative model of the external world and future goals, we propose a computational model of categorization in which important properties emerge These properties comprise the ability to infer latent causes of sensory experience, a hierarchical organization of latent causes, and an explicit inclusion of context and action representations. These aspects derive from considering the environmental statistics that are relevant to achieve goals, and from the fundamental Bayesian principle that any generative model should be preferred over alternative models based on an accuracy-complexity trade-off.

INTRODUCTION
A THEORY OF CATEGORIZATION
DISCUSSION
Full Text
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