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A Parallel Distributed Implementation of the Harmony Search Based Supervised Training of Artificial Neural Networks

机译:基于和谐搜索的人工神经网络监督训练的并行分布式实现

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The authors have published earlier a novel technique for the supervised training of feed-forward artificial neural networks using the Harmony Search algorithm. This paper proposes a parallel and distributed implementation method to speedup the execution time to address the training of larger pattern-classification benchmarking problems. The proposed method is a hybrid technique that adopts form the merits of two common parallel and distributed training methods, namely network partitioning and pattern partitioning. Experimentation is carried out on a large pattern-classification benchmarking problem using two Master-Slave parallel systems, a homogeneous system using a cluster computer and a heterogeneous system using a set of commodity computers connected via switched network. Results show that the proposed method attains a considerable speedup in comparison to the sequential implementation.
机译:作者之前已经发表了一种使用Harmony Search算法对前馈人工神经网络进行有监督训练的新技术。本文提出了一种并行且分布式的实现方法,以加快执行时间,以解决对较大的模式分类基准测试问题的训练。所提出的方法是一种混合技术,它采用了两种常见的并行和分布式训练方法的优点,即网络分区和模式分区。使用两个Master-Slave并行系统,使用集群计算机的同构系统和使用通过交换网络连接的一组商用计算机的异构系统,对一个大型模式分类基准测试问题进行了实验。结果表明,与顺序执行相比,该方法具有显着的加速效果。

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