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首页> 外文期刊>Knowledge and Data Engineering, IEEE Transactions on >Multiobjective Neural Network Ensembles Based on Regularized Negative Correlation Learning
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Multiobjective Neural Network Ensembles Based on Regularized Negative Correlation Learning

机译:基于正则负相关学习的多目标神经网络集成

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摘要

Negative Correlation Learning (NCL) [CHECK END OF SENTENCE], [CHECK END OF SENTENCE] is a neural network ensemble learning algorithm which introduces a correlation penalty term to the cost function of each individual network so that each neural network minimizes its mean-square-error (MSE) together with the correlation. This paper describes NCL in detail and observes that the NCL corresponds to training the entire ensemble as a single learning machine that only minimizes the MSE without regularization. This insight explains that NCL is prone to overfitting the noise in the training set. The paper analyzes this problem and proposes the multiobjective regularized negative correlation learning (MRNCL) algorithm which incorporates an additional regularization term for the ensemble and uses the evolutionary multiobjective algorithm to design ensembles. In MRNCL, we define the crossover and mutation operators and adopt nondominated sorting algorithm with fitness sharing and rank-based fitness assignment. The experiments on synthetic data as well as real-world data sets demonstrate that MRNCL achieves better performance than NCL, especially when the noise level is nontrivial in the data set. In the experimental discussion, we give three reasons why our algorithm outperforms others.
机译:负相关学习(NCL)[句子的检查结束],[句子的检查结束]是一种神经网络集成学习算法,它将相关惩罚项引入每个单个网络的成本函数中,从而使每个神经网络均方根最小错误(MSE)以及相关性。本文详细介绍了NCL,并观察到NCL相当于将整个集成训练为一个单独的学习机,仅将MSE最小化而不进行正则化。这种见解说明,NCL倾向于过度拟合训练集中的噪声。本文对这一问题进行了分析,提出了一种多目标正则化负相关学习算法,该算法结合了集成化的附加正则化项,并利用进化多目标算法设计了集合体。在MRNCL中,我们定义了交叉和变异算子,并采用具有适应度共享和基于等级的适应度分配的非支配排序算法。对合成数据以及实际数据集进行的实验表明,MRNCL的性能要优于NCL,尤其是在数据集中的噪声水平不低的情况下。在实验讨论中,我们给出了我们的算法优于其他算法的三个原因。

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