基于图形的交叉验证委员会集成

Nils Murrugarra-Llerena, Lilian Berton, A. Lopes
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引用次数: 5

摘要

集成技术将几个单独的分类器组合在一起,以获得一个复合分类器,该分类器的性能优于单独使用它们中的任何一个。尽管这些技术已经成功地应用于许多领域,但它们在网络数据上的应用仍有待研究。对于从相互关联的关系数据中进行替换的采样,目前已知的策略并不多。为了在这个方向上做出贡献,我们提出了一个应用于基于图的分类器的交叉验证委员会集成过程。所提出的集成保持或显著提高了测试的基于关系图的分类器的准确性。我们还研究了几个单独分类器之间的多样性所起的作用,即,他们在预测中同意的程度,以解释技术的成功或失败。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Graph-based cross-validated committees ensembles
Ensemble techniques combine several individual classifiers to obtain a composite classifier that outperforms each of them alone. Despite of these techniques have been successfully applied to many domains, their applications on networked data still need investigation. There are not many known strategies for sampling with replacement from interconnected relational data. To contribute in this direction, we propose a cross-validated committee ensemble procedure applied to graph-based classifiers. The proposed ensemble either maintains or significantly improves the accuracy of the tested relational graph-based classifiers. We also investigate the role played by diversity among the several individual classifiers, i.e., how much they agree in their predictions, to explain the technique success or failure.
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