Book contents
- Frontmatter
- Contents
- List of contributors
- Preface
- Neurons and neural networks: general principles
- Synaptic plasticity, topological and temporal features, and higher cortical processing
- Spin glass models and cellular automata
- 13 Neural networks: learning and forgetting
- 14 Learning by error corrections in spin glass models of neural networks
- 15 Random complex automata: analogy with spin glasses
- 16 The evolution of data processing abilities in competing automata
- 17 The inverse problem for neural nets and cellular automata
- Cyclic phenomena and chaos in neural networks
- The cerebellum and the hippocampus
- Olfaction, vision and cognition
- Applications to experiment, communication and control
- Author index
- Subject index
14 - Learning by error corrections in spin glass models of neural networks
from Spin glass models and cellular automata
Published online by Cambridge University Press: 05 February 2012
- Frontmatter
- Contents
- List of contributors
- Preface
- Neurons and neural networks: general principles
- Synaptic plasticity, topological and temporal features, and higher cortical processing
- Spin glass models and cellular automata
- 13 Neural networks: learning and forgetting
- 14 Learning by error corrections in spin glass models of neural networks
- 15 Random complex automata: analogy with spin glasses
- 16 The evolution of data processing abilities in competing automata
- 17 The inverse problem for neural nets and cellular automata
- Cyclic phenomena and chaos in neural networks
- The cerebellum and the hippocampus
- Olfaction, vision and cognition
- Applications to experiment, communication and control
- Author index
- Subject index
Summary
Introduction
Neural networks of spin glass type reveal remarkable properties of a content-addressable memory (Hopfield, 1982; Amit et al, 1985; Kinzel, 1985a). They are able to retrieve the full information of a learned pattern from an initial state which contains only partial information. Recently much effort has been devoted to the modeling of networks based on Hebb's learning rule (Cooper et al., 1979). These networks are the Hopfield model and its modifications. All have in common a local learning rule which allows the storage of orthogonal patterns without errors. The learning rule is local if the change of the synaptic coefficient depends only on the states of the two interconnected neurons and possibly on the local field of the postsynaptic one. This property seems to be essential from a biological point of view. However, the storing capability of these networks is strongly limited by the fact that they are not able to store correlated patterns without errors (Kinzel, 1985b).
On the other hand a storing procedure for correlated patterns is available (Personnaz et al, 1985; Kanter & Sompolinsky, 1986). But it involves matrix inversions which are not equivalent to a local learning mechanism. It is the purpose of this paper to present a new local learning rule for neural networks which are able to store both correlated and uncorrelated patterns. Moreover, this learning rule enables the network to fulfil two further important properties of natural networks: the learning process does not reverse the signs of the synaptic coefficients and leads to a network with unsymmetric bonds even if it starts from a symmetric one.
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- Computer Simulation in Brain Science , pp. 232 - 239Publisher: Cambridge University PressPrint publication year: 1988