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Preliminary Steps towards Efficient Classification in Large Medical Datasets: Structure Optimization for Deep Learning Networks through Parallelized Differential Evolution

机译:大型医疗数据集中有效分类的初步步骤:通过并行差分演进的深度学习网络结构优化

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Deep Neural Networks are being more and more widely used to perform several tasks over highly-sized datasets, one of them being classification. Finding good configurations for Deep Neural Network structures is a very important problem in general, and particularly in the medical domain. Currently, either trial-and-error methodologies or sampling-based ones are considered. This paper describes some preliminary steps towards effectively facing this task. The first step consists in the use of Differential Evolution, a kind of an Evolutionary Algorithm. The second lies in using a parallelized version in order to reduce the turnaround time. The preliminary results obtained here show that this approach can be useful in easily obtaining structures that allow increases in the network accuracy with respect to those provided by humans.
机译:深度神经网络越来越广泛地用于在高尺寸的数据集中执行多个任务,其中一个是分类。找到深度神经网络结构的良好配置是一般的一个非常重要的问题,特别是在医学领域。目前,考虑试验和错误方法或基于采样的方法。本文介绍了有效面对这项任务的一些初步步骤。第一步包括使用差分演进,一种进化算法。第二个在于使用并行化版本,以减少周转时间。这里获得的初步结果表明,该方法可以在容易地获得允许与人类提供的那些方面的网络精度增加的结构。

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