A Theory of How Columns in the Neocortex Enable Learning the Structure of the World

Neocortical regions are organized into columns and layers. Connections between layers run mostly perpendicular to the surface suggesting a columnar functional organization. Some layers have long-range excitatory lateral connections suggesting interactions between columns. Similar patterns of connect...

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Bibliographic Details
Published inFrontiers in neural circuits Vol. 11; p. 81
Main Authors Hawkins, Jeff, Ahmad, Subutai, Cui, Yuwei
Format Journal Article
LanguageEnglish
Published Switzerland Frontiers Research Foundation 25.10.2017
Frontiers Media S.A
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Summary:Neocortical regions are organized into columns and layers. Connections between layers run mostly perpendicular to the surface suggesting a columnar functional organization. Some layers have long-range excitatory lateral connections suggesting interactions between columns. Similar patterns of connectivity exist in all regions but their exact role remain a mystery. In this paper, we propose a network model composed of columns and layers that performs robust object learning and recognition. Each column integrates its changing input over time to learn complete predictive models of observed objects. Excitatory lateral connections across columns allow the network to more rapidly infer objects based on the partial knowledge of adjacent columns. Because columns integrate input over time and space, the network learns models of complex objects that extend well beyond the receptive field of individual cells. Our network model introduces a new feature to cortical columns. We propose that a representation of location relative to the object being sensed is calculated within the sub-granular layers of each column. The location signal is provided as an input to the network, where it is combined with sensory data. Our model contains two layers and one or more columns. Simulations show that using Hebbian-like learning rules small single-column networks can learn to recognize hundreds of objects, with each object containing tens of features. Multi-column networks recognize objects with significantly fewer movements of the sensory receptors. Given the ubiquity of columnar and laminar connectivity patterns throughout the neocortex, we propose that columns and regions have more powerful recognition and modeling capabilities than previously assumed.
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Reviewed by: Jason N. MacLean, University of Chicago, United States; Heiko J. Luhmann, Johannes Gutenberg-Universität Mainz, Germany; Rui Ponte Costa, University of Bern, Switzerland
Edited by: Fritjof Helmchen, University of Zurich, Switzerland
ISSN:1662-5110
1662-5110
DOI:10.3389/fncir.2017.00081