LEARNING
Genetic evolution of the topology and weight distribution of neural networks
Vittorio Maniezzo
- Year
- 1994
- Citations
- 438
Abstract
This paper proposes a system based on a parallel genetic algorithm with enhanced encoding and operational abilities. The system, used to evolve feedforward artificial neural networks, has been applied to two widely different problem areas: Boolean function learning and robot control. It is shown that the good results obtained in both cases are due to two factors: first, the enhanced exploration abilities provided by the search-space reducing evolution of both coding granularity and network topology, and, second, the enhanced exploitational abilities due to a recently proposed cooperative local optimizing genetic operator.
Keywords
Computer scienceArtificial neural networkCoding (social sciences)Encoding (memory)Feedforward neural networkTopology (electrical circuits)Genetic algorithmGranularityNetwork topologyArtificial intelligence
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