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Original Article

A learning rule for extracting spatio-temporal invariances

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Pages 429-436 | Received 09 Jun 1995, Published online: 09 Jul 2009
 

Abstract

The inputs to photoreceptors tend to change rapidly over time, whereas physical parameters (e.g. surface depth) underlying these changes vary more slowly. Accordingly, if a neuron codes for a physical parameter then its output should also change slowly, despite its rapidly fluctuating inputs. We demonstrate that a model neuron which adapts to make its output vary smoothly over time can learn to extract invariances implicit in its input. This learning consists of a linear combination of Hebbian and anti-Hebbian synaptic changes, operating simultaneously upon the same connection weights but at different time scales. This is shown to be sufficient for the unsupervised learning of simple spatio-temporal invariances.

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