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Search of Techniques to Improve Artificial Neural Networks Training Time

机译:改善人工神经网络训练时间的技术搜索

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摘要

In the search of techniques to improve Artificial Neural Networks (ANN) training time, this work investigates the following approaches: parallel implementation of Kohonen's Self-Organizing Map (SOM) in a multiprocessing environment and utilization of an advanced training algorithm for Multilayer Perceptrons (MLP) networks. The parallel algorithm developed for the SOM was compared with its sequential analog and the training algorithm proposed for MLP networks was compared with the standard Backpropagation algorithm. The comparisons were realized using Remote Sensing data.
机译:在寻求改善人工神经网络(ANN)训练时间的技术的过程中,这项工作研究了以下方法:在多处理环境中并行实施Kohonen的自组织图(SOM)以及利用多层感知器(MLP)的高级训练算法)网络。将针对SOM开发的并行算法与其顺序模拟进行比较,并将针对MLP网络提出的训练算法与标准反向传播算法进行比较。比较是使用遥感数据实现的。

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