基于监督邻域的集成属性约简

Jingjing Song, Zehua Jiang, Huili Dou, Eric C. C. Tsang
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引用次数: 0

摘要

在邻域属性约简中,邻域关系是典型的样本识别工具。值得注意的是,邻域关系可能无法提供令人满意的区分能力。鉴于此,本文对基于监督邻域的属性约简进行了探索。然而,基于监督邻域的约简可能缺乏通用性。为了弥补这种差距,本文提出了一种基于监督邻域约简的集成策略。这种集成策略是通过考虑各个决策类的需求来实现的。在8个UCI数据集上的实验结果表明,基于监督邻域的集成策略生成的约简不仅具有较高的泛化性能,而且具有较高的稳定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Supervised Neighborhood Based Ensemble Attribute Reduction
In neighborhood based attribute reduction, neighborhood relation is a typical tool for distinguishing samples. Notably, the neighborhood relation may be powerless in providing satisfactory distinguishing ability. In view of this, the supervised neighborhood based attribute reduction has been explored. However, the supervised neighborhood based reduct may be lack of universality. To file such gap, an ensemble strategy for computing supervised neighborhood based reduct is proposed in our paper. Such ensemble strategy is realized through considering the requirement of each decision class. The experimental results on 8 UCI data sets show that the supervised neighborhood based ensemble strategy can generate reduct not only with higher generalization performance but also with higher stability.
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