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A Dynamic Method That Emphasizes Diversity for Constructing Ensembles of Neural Network Classiilers

机译:一种动态方法,强调构建神经网络分类器的组合的多样性

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It is well known that ensembles of neural network classifiers produce better accuracy than a single neural classifier provided there is diversity in the ensemble. In this paper we present a dynamic method for producing such ensembles that emphasizes diversity in the ensemble members by weighted k-nearest neighbors. This emphasis on diversity produces ensembles with low generalization errors from ensemble members with comparatively high generalization error. We compare this with other methods on performance, and find that our method is efficient and effective.
机译:众所周知,神经网络分类器的集合产生比单个神经分类器的更好的精度,而是在集合中存在多样性。在本文中,我们提出了一种动态方法,用于制作这样的集合,其通过加权k-collect邻居强调集合成员的多样性。这种强调多样性产生了具有与相对高的泛化误差相对高的集成成员的低概括误差的集合。我们将其与其他性能的方法进行比较,并发现我们的方法有效且有效。

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