Open AccessJournal Article
Evolutionary neural network learning
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TL;DR: In this paper, EAs using direct representations are applied to several classification and regression ANN learning tasks, and EAs are also combined with local optimization under the Lamarckian framework.
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Abstract: Several gradient-based methods have been developed for Artificial Neural Network (ANN) training. Still, in some situations, such procedures may lead to local minima, making Evolutionary Algorithms (EAs) a promising alternative. In this work, EAs using direct representations are applied to several classification and regressionANN learning tasks. Furthermore, EAs are also combined with local optimization, under the Lamarckian framework. Both strategies are compared with conventional training methods. The results reveal an enhanced performance by a macro-mutation based Lamarckian approach.
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Citations
Evolution of Plastic Learning in Spiking Networks via Memristive Connections
TL;DR: A spiking neuroevolutionary system which implements memristors as plastic connections, i.e., whose weights can vary during a trial, which provides an in-depth analysis of network structure and demonstrates that memristive plasticity enables higher performance than constant-weighted connections in both static and dynamic reward scenarios.
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