2010 NIPS NeurIPS 2010

Over-complete representations on recurrent neural networks can support persistent percepts

Abstract

A striking aspect of cortical neural networks is the divergence of a relatively small number of input channels from the peripheral sensory apparatus into a large number of cortical neurons, an over-complete representation strategy. Cortical neurons are then connected by a sparse network of lateral synapses. Here we propose that such architecture may increase the persistence of the representation of an incoming stimulus, or a percept. We demonstrate that for a family of networks in which the receptive field of each neuron is re-expressed by its outgoing connections, a represented percept can remain constant despite changing activity. We term this choice of connectivity REceptive FIeld REcombination (REFIRE) networks. The sparse REFIRE network may serve as a high-dimensional integrator and a biologically plausible model of the local cortical circuit.

🌉 Interdisciplinary Bridge — Deep Learning and Interdisciplinary
🧭 Keyword Pioneer — over-complete representations
🐣 Hot Topic Early Bird — recurrent neural network
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📈 Trend Setter — Neural Networks