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A Novel Dynamic Weight Neural Network Ensemble Model

机译:一种新型的动态权重神经网络集成模型

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摘要

Neural network is easy to fall into the minimum and over-fitting in the application. The paper proposes a novel dynamic weight neural network ensemble model (DW-NNE). The Bagging algorithm generates certain neural network individuals which then are selected by the k-means clustering algorithm. In addition, for the integrated output problems, the paper proposes a dynamic weight model which is based on fuzzy neural network with accordance to the ideas of dynamic weight. The experimental results show that the integrated approach can achieve better prediction accuracy compared to the traditional single model and neural network ensemble model.
机译:神经网络很容易陷入应用的最小化和过度拟合。提出了一种新型的动态权重神经网络集成模型(DW-NNE)。 Bagging算法生成某些神经网络个体,然后由k-means聚类算法选择这些个体。此外,针对集成输出问题,根据动态权重的思想,提出了一种基于模糊神经网络的动态权重模型。实验结果表明,与传统的单一模型和神经网络集成模型相比,该集成方法可以实现更好的预测精度。

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