Evolutionary Artificial Neural Networks by Multi-Dimensional Particle Swarm Optimization
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Date
2009
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Pergamon-Elsevier Science Ltd
Open Access Color
Green Open Access
Yes
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Publicly Funded
No
Abstract
In this paper, we propose a novel technique for the automatic design of Artificial Neural Networks (ANNs) by evolving to the optimal network configuration(s) within an architecture space. It is entirely based on a multi-dimensional Particle Swarm Optimization (MD PSO) technique, which re-forms the native structure of swarm particles in such a way that they can make inter-dimensional passes with a dedicated dimensional PSO process. Therefore, in a multidimensional search space where the optimum dimension is unknown, swarm particles can seek both positional and dimensional optima. This eventually removes the necessity of setting a fixed dimension a priori, which is a common drawback for the family of swarm optimizers. With the proper encoding of the network configurations and parameters into particles, MID PSO can then seek the positional optimum in the error space and the dimensional optimum in the architecture space. The optimum dimension converged at the end of a MD PSO process corresponds to a unique ANN configuration where the network parameters (connections, weights and biases) can then be resolved from the positional optimum reached on that dimension. In addition to this, the proposed technique generates a ranked list of network configurations, from the best to the worst. This is indeed a crucial piece of information, indicating what potential configurations can be alternatives to the best one, and which configurations should not be used at all for a particular problem. In this study, the architecture space is defined over feed-forward, fully-connected ANNs so as to use the conventional techniques such as back-propagation and some other evolutionary methods in this field. The proposed technique is applied over the most challenging synthetic problems to test its optimality on evolving networks and over the benchmark problems to test its generalization capability as well as to make comparative evaluations with the several competing techniques. The experimental results show that the MD PSO evolves to optimum or near-optimum networks in general and has a superior generalization capability. Furthermore, the MID PSO naturally favors a low-dimension solution when it exhibits a competitive performance with a high dimension counterpart and such a native tendency eventually yields the evolution process to the compact network configurations in the architecture space rather than the complex ones, as long as the optimality prevails. (C) 2009 Elsevier Ltd. All rights reserved.
Description
Keywords
Particle swarm optimization, Multi-dimensional search, Evolutionary artificial neural networks and multi-layer perceptrons, Algorithm, Neurons, Stochastic Processes, Multi-dimensional search, Heart Diseases, Particle swarm optimization, Breast Neoplasms, Evolutionary artificial neural networks and multi-layer perceptrons, 629, Artificial Intelligence, Computer Systems, Diabetes Mellitus, Humans, Diagnosis, Computer-Assisted, Neural Networks, Computer, Algorithms
Fields of Science
02 engineering and technology, 0202 electrical engineering, electronic engineering, information engineering
Citation
WoS Q
Q1
Scopus Q
Q1

OpenCitations Citation Count
211
Source
Neural Networks
Volume
22
Issue
10
Start Page
1448
End Page
1462
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Citations
CrossRef : 209
Scopus : 246
PubMed : 8
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Mendeley Readers : 157
SCOPUS™ Citations
246
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Web of Science™ Citations
190
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Page Views
3
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OpenAlex FWCI
26.2716
Sustainable Development Goals
17
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