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The improved localized generalization error model and its applications to feature selection for RBFNN

机译:改进的局部广义误差模型及其在RBFNN特征选择中的应用

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In pattern classification problems, the generalization error caused more and more attentions because of its importance for classifier's training. Wing W.Y. NG [1] et al. proposed localized generalization error model compared to global generalization error model. The idea is perfect, but the derivation of the error model and stochastic sensitivity measure has some flaws. In this paper, we propose an improved localized generalization error model in order to avoid these flaws of the model proposed by Wing.
机译:在模式分类问题中,泛化错误由于对分类器训练的重要性而引起了越来越多的关注。永永NG [1]等。与全局泛化误差模型相比,提出了局部泛化误差模型。这个想法是完美的,但是误差模型和随机灵敏度测度的推导存在一些缺陷。在本文中,我们提出了一种改进的局部化广义误差模型,以避免Wing提出的模型的这些缺陷。

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