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(Neural Computation. 2004;16:501-533.)
© 2004 The MIT Press


Letter

Rapid Processing and Unsupervised Learning in a Model of the Cortical Macrocolumn

Jörg Lücke

luecke{at}neuroinformatik.rub.de, Institut für Neuroinformatik, Ruhr-Universität Bochum, D-44780 Bochum, Germany

Christoph von der Malsburg

malsburg{at}neuroinformatik.rub.de, Institut für Neuroinformatik, Ruhr-Universität Bochum, D-44780 Bochum, Germany

We study a model of the cortical macrocolumn consisting of a collection of inhibitorily coupled minicolumns. The proposed system overcomes several severe deficits of systems based on single neurons as cerebral functional units, notably limited robustness to damage and unrealistically large computation time. Motivated by neuroanatomical and neurophysiological findings, the utilized dynamics is based on a simple model of a spiking neuron with refractory period, fixed random excitatory interconnection within minicolumns, and instantaneous inhibition within one macrocolumn. A stability analysis of the system's dynamical equations shows that minicolumns can act as monolithic functional units for purposes of critical, fast decisions and learning. Oscillating inhibition (in the gamma frequency range) leads to a phase-coupled population rate code and high sensitivity to small imbalances in minicolumn inputs. Minicolumns are shown to be able to organize their collective inputs without supervision by Hebbian plasticity into selective receptive field shapes, thereby becoming classifiers for input patterns. Using the bars test, we critically compare our system's performance with that of others and demonstrate its ability for distributed neural coding.




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