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Hybrid neural network ensemble construction combining boosting and negative correlation learning

机译:融合Boosting和负相关学习的混合神经网络集成构建。

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An ensemble of several neural networks is a convenient way to achieve better performance for a classification task. A number of methods on the basis of different techniques have been investigated for neural network ensemble (NNE) construction from early 1990s. To achieve better performance, a few hybrid NNE methods combining different individual methods are also investigated recently. This paper also presents a hybrid ensemble construction method combining boosting and negative correlation learning (NCL). The proposed method first produces a pool of predefined number of networks using standard boosting and NCL, and then genetic algorithm is used to the task of selecting an optimal subset of networks for an NNE from the pool. The proposed method builds problem-dependent adaptive NNE and shows consistently better performance with concise ensemble over the conventional methods when tested on a suite of 20 benchmark problems.
机译:多个神经网络的集成是一种实现分类任务更好性能的便捷方法。自1990年代初以来,已经针对基于神经网络集成(NNE)的构建研究了许多基于不同技术的方法。为了获得更好的性能,最近还研究了几种结合了不同方法的混合NNE方法。本文还提出了一种结合了Boosting和负相关学习(NCL)的混合集成构建方法。所提出的方法首先使用标准增强和NCL生成预定义数量的网络池,然后将遗传算法用于从池中为NNE选择最佳网络子集的任务。当在一组20个基准问题上进行测试时,所提出的方法构建了与问题相关的自适应NNE,并且与常规方法相比,具有简洁的整体表现出始终如一的更好性能。

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