Dynamic knowledge representation in connectionist systems

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Bishop, J. M., Nasuto, S. J. orcid id iconORCID: https://orcid.org/0000-0001-9414-9049 and de Meyer, K. (2002) Dynamic knowledge representation in connectionist systems. In: Artificial Neural Networks - ICANN'02, 28-30 Aug 2002, Madrid, Spain, pp. 308-313.

Abstract/Summary

One of the most pervading concepts underlying computational models of information processing in the brain is linear input integration of rate coded uni-variate information by neurons. After a suitable learning process this results in neuronal structures that statically represent knowledge as a vector of real valued synaptic weights. Although this general framework has contributed to the many successes of connectionism, in this paper we argue that for all but the most basic of cognitive processes, a more complex, multi-variate dynamic neural coding mechanism is required - knowledge should not be spacially bound to a particular neuron or group of neurons. We conclude the paper with discussion of a simple experiment that illustrates dynamic knowledge representation in a spiking neuron connectionist system.

Additional Information Proceedings ISBN: 3540440747
Item Type Conference or Workshop Item (Paper)
URI https://reading-clone.eprints-hosting.org/id/eprint/18635
Refereed Yes
Divisions Life Sciences > School of Biological Sciences > Department of Bio-Engineering
Additional Information Proceedings ISBN: 3540440747
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