A data reduction method to train, test, and validate neural networks

G.L. Colmenares, R. Perez
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引用次数: 5

Abstract

Prediction is an important application of neural networks. When a large data source is used to train a neural network model to make prediction, considerable effort and time are required to obtain reliable outcomes. This paper describes a technique that reduces the size of a large data set but still preserves the pertinent characteristics of the problem domain in the data. Neural network models built using this reduced data set show nearly identical performance on the same set of test cases than models built using the full size data set.
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一种训练、测试和验证神经网络的数据约简方法
预测是神经网络的一个重要应用。当使用大型数据源来训练神经网络模型进行预测时,需要花费相当大的精力和时间来获得可靠的结果。本文描述了一种减少大型数据集的大小,但仍然保留数据中问题域的相关特征的技术。使用此简化数据集构建的神经网络模型在相同的测试用例集上显示出与使用完整尺寸数据集构建的模型几乎相同的性能。
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