×

zbMATH — the first resource for mathematics

Computational differences between asymmetrical and symmetrical networks. (English) Zbl 0916.92003
Summary: Symmetrically connected recurrent networks have recently been used as models of a host of neural computations. However, biological neural networks have asymmetrical connections, at the very least because of the separation between excitatory and inhibitory neurons in the brain. We study characteristic differences between asymmetrical networks and their symmetrical counterparts in cases for which they act as selective amplifiers for particular classes of input patterns. We show that the dramatically different dynamical behaviours to which they have access, often make the asymmetrical networks computationally superior. We illustrate our results in networks that selectively amplify oriented bars and smooth contours in visual inputs.

MSC:
92B20 Neural networks for/in biological studies, artificial life and related topics
92C20 Neural biology
PDF BibTeX XML Cite
Full Text: DOI