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A Greedy Iterative Layered Framework for Training Feed Forward Neural Networks

机译:用于训练前锋神经网络的贪婪迭代分层框架

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In recent years neuroevolution has become a dynamic and rapidly growing research field. Interest in this discipline is motivated by the need to create ad-hoc networks, the topology and parameters of which are optimized, according to the particular problem at hand. Although neuroevolution-based techniques can contribute fundamentally to improving the performance of artificial neural networks (ANNs), they present a drawback, related to the massive amount of computational resources needed. This paper proposes a novel population-based framework, aimed at finding the optimal set of synaptic weights for ANNs. The proposed method partitions the weights of a given network and, using an optimization heuristic, trains one layer at each step while "freezing" the remaining weights. In the experimental study, particle swarm optimization (PSO) was used as the underlying optimizer within the framework and its performance was compared against the standard training (i.e., training that considers the whole set of weights) of the network with PSO and the backward propagation of the errors (backpropagation). Results show that the subsequent training of sub-spaces reduces training time, achieves better generalizability, and leads to the exhibition of smaller variance in the architectural aspects of the network.
机译:近年来,神经发展已成为一种动态而迅速增长的研究领域。根据手头的特定问题,对这一学科的兴趣是创建ad-hoc网络的需求,其拓扑和参数进行了优化。尽管基于神经形象的技术可以从根本上贡献以提高人工神经网络的性能(ANNS),但它们呈现出与所需的大量计算资源相关的缺点。本文提出了一种新的基于人口的框架,旨在找到ANNS的最佳突触权重集合。所提出的方法分区给定网络的权重,并且使用优化启发式,在每个步骤中列举一层,同时“冻结”剩余权重。在实验研究中,粒子群优化(PSO)用作框架内的底层优化器,并将其性能与具有PSO的网络的标准培训(即,考虑整个权重的培训)进行比较错误(backpropagation)。结果表明,随后的子空间培训减少了培训时间,实现了更好的普遍性,并导致网络架构方面的较小方差展览。

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