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An input data set compression method for improving the training ability of neural networks

机译:一种提高神经网络培训能力的输入数据集压缩方法

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Artificial Neural Networks (ANNs) can learn complex functions from the input data and are relatively easy to implement in any application. On the other hand, a significant disadvantage of their usage is they usually high training time-need, which scales with the structural parameters of the networks and the quantity of input data. However, this can be done offline; the training has a non-negligible cost and further, can cause a delay in the operation. To increase the speed of the training of the ANNs used for classification, we have developed a new training procedure: instead of directly using the training data in the training phase, the data is first clustered and the ANNs are trained by using only the centers of the obtained clusters (which are basically the compressed versions of the original input data).
机译:人工神经网络(ANNS)可以从输入数据学习复杂功能,并且在任何应用中相对容易实现。 另一方面,它们使用的显着缺点是它们通常需要高训练时间,其与网络的结构参数和输入数据量进行缩放。 但是,这可以离线完成; 培训具有不可忽略的成本和进一步,可能导致操作延迟。 为了提高用于分类的ANN的培训速度,我们开发了一种新的培训程序:而不是直接使用培训阶段中的培训数据,而是首先聚集数据,并且仅使用所在的中心培训 所获得的群集(基本上是原始输入数据的压缩版本)。

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