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Effective Neural Network Ensemble Approach for Improving Generalization Performance

机译:有效的神经网络集成方法,用于提高泛化性能

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摘要

This paper, with an aim at improving neural networks' generalization performance, proposes an effective neural network ensemble approach with two novel ideas. One is to apply neural networks' output sensitivity as a measure to evaluate neural networks' output diversity at the inputs near training samples so as to be able to select diverse individuals from a pool of well-trained neural networks; the other is to employ a learning mechanism to assign complementary weights for the combination of the selected individuals. Experimental results show that the proposed approach could construct a neural network ensemble with better generalization performance than that of each individual in the ensemble combining with all the other individuals, and than that of the ensembles with simply averaged weights.
机译:为了提高神经网络的泛化性能,本文提出了一种有效的神经网络集成方法,其中包含两个新颖的思想。一种是将神经网络的输出敏感性作为一种度量,以评估训练样本附近输入处的神经网络的输出多样性,从而能够从训练有素的神经网络中选择不同的个体。另一种是采用学习机制为所选个体的组合分配互补权重。实验结果表明,所提出的方法可以构造出比集合中的每个个体与所有其他个体相结合的综合性能更好的泛化性能,并且比具有简单平均权重的集合的泛化性能更好。

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