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Guelph Natural Computation Group, Department of Computing and Information Science, University of Guelph, Guelph, Ontario, N1G 2W1 Canada, skremer@uoguelph.ca
This article reviews connectionist network architectures and training algorithms that are capable of dealing with patterns distributed across both space and timespatiotemporal patterns. It provides common mathematical, algorithmic, and illustrative frameworks for describing spatiotemporal networks, making it easier to compare and contrast their representational and operational characteristics. Computational power, representational issues, and learning are discussed. In additional references to the relevant source publications are provided. This article can serve as a guide to prospective users of spatiotemporal networks by providing an overview of the operational and representational alternatives available.
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