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Distributed learning on nonuniform class-probability distributions based on genetic algorithms and artificial neural networks

机译:基于遗传算法和人工神经网络的非均匀类概率分布分布式学习

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Nowadays, machine learning applications deal most often with large and/or distributed datasets. In this context, distributed learning seems to be the most promising line of research to handle both situations since large datasets can be allocated across several locations. Moreover, the current trend of reducing the speed of processors in favor of multi-core processors and computer clusters leads to a suitable context for distributed learning. Notwithstanding, only a few distributed learning algorithms have been proposed so far in the literature. One of them is DEvoNet, which uses artificial neural networks and genetic algorithms. DEvoNet shows a good performance on many datasets but several limitations were pointed out in connection with its poor performance on nonuniform class-probability distributions of data. An improvement of DEvoNet, which is based on distributing the computation of the genetic algorithm, is presented in this paper. The results obtained during experimentation show a notorious improvement of the performance of DEvoNet on both uniform and nonuniform classprobability distributions of data.
机译:如今,机器学习应用程序通常与大型和/或分布式数据集交往。在这种情况下,分布式学习似乎是处理这两个情况的最有希望的研究线,因为大型数据集可以跨多个位置分配。此外,目前降低处理器速度的目前趋势,以支持多核处理器和计算机集群导致分布式学习的合适背景。尽管如此,到目前为止仅提出了一些分布式学习算法。其中一个是德蒙特,它使用人工神经网络和遗传算法。德蒙特在许多数据集中显示了良好的性能,但有关其对数据的不均匀类概率分布的性能不佳,指出了几个限制。本文介绍了基于分布遗传算法的计算的德蒙特的改进。在实验期间获得的结果表明,德蒙特对均匀和不均匀的数据的性能的性能进行了臭名昭着的改善。

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