Pattern-recognition by an artificial network derived from biologic neuronal systems
- 1 March 1990
- journal article
- conference paper
- Published by Springer Nature in Biological Cybernetics
- Vol. 62 (5) , 363-376
- https://doi.org/10.1007/bf00197642
Abstract
A novel artificial neural network, derived from neurobiological observations, is described and examples of its performance are presented. This DYnamically STable Associative Learning (DYSTAL) network associatively learns both correlations and anticorrelations, and can be configured to classify or restore patterns with only a change in the number of output units. DYSTAL exhibits some particularly desirable properties: computational effort scales linearly with the number of connections, i.e., it is0(N) in complexity; performance of the network is stable with respect to network parameters over wide ranges of their values and over the size of the input field; storage of a very large number of patterns is possible; patterns need not be orthogonal; network connections are not restricted to multi-layer feed-forward or any other specific structure; and, for a known set of deterministic input patterns, the network weights can be computed, a priori, in closed form. The network has been associatively trained to perform the XOR function as well as other classification tasks. The network has also been trained to restore patterns obscured by binary or analog noise. Neither global nor local feedback connections are required during learning; hence the network is particularly suitable for hardware (VLSI) implementation.This publication has 29 references indexed in Scilit:
- Neocognitron: A hierarchical neural network capable of visual pattern recognitionPublished by Elsevier ,2003
- Imaging of Memory-Specific Changes in the Distribution of Protein Kinase C in the HippocampusScience, 1989
- Memory Storage and Neural SystemsScientific American, 1989
- The self-organizing feature mapsPhysica Scripta, 1989
- A Spatial-Temporal Model of Cell ActivationScience, 1988
- Computing with Neural Circuits: A ModelScience, 1986
- Separating Figure from Ground with a Parallel NetworkPerception, 1986
- Calcium-Mediated Reduction of Ionic Currents: A Biophysical Memory TraceScience, 1984
- An interactive activation model of context effects in letter perception: I. An account of basic findings.Psychological Review, 1981
- On a successive transformation of probability distribution and its application to the analysis of the optimum gradient methodAnnals of the Institute of Statistical Mathematics, 1959