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Cortical Microcircuits from a Generative Vision Model
Author(s) -
Dileep George,
Alexander Lavin,
J. Swaroop Guntupalli,
David A. Mély,
N. Hay,
Miguel Lázaro-Gredilla
Publication year - 2018
Publication title -
2022 conference on cognitive computational neuroscience
Language(s) - English
Resource type - Conference proceedings
DOI - 10.32470/ccn.2018.1154-0
Subject(s) - generative grammar , computer science , generative model , vision science , artificial intelligence , computer vision , cognitive science , human–computer interaction , psychology
Understanding the information processing roles of cortical circuits is an outstanding problem in neuroscience and artificial intelligence. The theoretical setting of Bayesian inference has been suggested as a framework for understanding cortical computation. Based on a recently published generative model for visual inference (George et al., 2017), we derive a family of anatomically instantiated and functional cortical circuit models. In contrast to simplistic models of Bayesian inference, the underlying generative modelu0027s representational choices are validated with real-world tasks that required efficient inference and strong generalization. The cortical circuit model is derived by systematically comparing the computational requirements of this model with known anatomical constraints. The derived model suggests precise functional roles for the feedforward, feedback and lateral connections observed in different laminae and columns, and assigns a computational role for the path through the thalamus.

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