基于迭代收敛的子空间分类器集成分类器设计

B. Vinzamuri, K. Karlapalem
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引用次数: 0

摘要

对于给定的数据集,可以有多个分类器。生成多个分类器的一种方法是使用属性集的子空间。本文通过迭代收敛程序生成子空间分类器来构建集成分类器。实验评估分别涵盖标记和未标记(盲)数据的情况。我们在加州大学欧文分校的许多基准数据集上评估了我们的方法,以评估我们的方法在不同的诱导噪声水平下的鲁棒性。我们明确地比较和展示了使用几种不同的聚类不相似性度量为分类生成的聚类的效用。结果表明,与其他多类分类方法相比,我们的集成分类器具有更好的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Designing an ensemble classifier over subspace classifiers using iterative convergence routine
There can be multiple classifiers for a given data set. One way to generate multiple classifiers is to use subspaces of the attribute sets. In this paper, we generate subspace classifiers by an iterative convergence routine to build an ensemble classifier. Experimental evaluation covers the cases of both labelled and unlabelled (blind) data separately. We evaluate our approach on many benchmark UC Irvine datasets to assess the robustness of our approach with varying induced noise levels. We explicitly compare and present the utility of the clusterings generated for classification using several diverse clustering dissimilarity metrics. Results show that our ensemble classifier is a more robust classifier in comparison to different multi-class classification approaches.
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