基于OWA模糊关系聚合的模糊粗糙特征选择

P. Su, C. Shang, Yitian Zhao, Tianhua Chen, Q. Shen
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引用次数: 4

摘要

数据集的特征或属性之间的交互构成了机器学习和数据挖掘中的一个主要主题。特别是,已经建立了广泛的方法来进行特征选择、排序和分组。其中,基于模糊粗糙集的特征选择(FRFS)已被证明在保留属性语义的情况下对实值数据集的降维非常有效。在模糊粗糙集中,通过模糊相似关系扩展了清晰等价类的概念,可以根据数据实例的属性值捕获数据实例之间的实值相似度量。因此,需要研究模糊相似关系的聚合,以反映属性之间的相互作用。本文提出了一种利用模糊相似关系的OWA聚合来更好地执行频响测试的方法。通过选择OWA中的应力函数,可以提供高度的建模灵活性。实验研究表明,通过使用不同的应力函数,可以选择不同的特征;在执行分类任务时,给定适当的应力函数,所选特征的质量可以比最先进的FRFS所能达到的质量更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fuzzy rough feature selection based on OWA aggregation of fuzzy relations
The interaction between features, or attributes, of a dataset forms a major topic in machine learning and data mining. In particular, a wide range of methods have been established for feature selection, ranking, and grouping. Amongst these, fuzzy rough set based feature selection (FRFS) has been shown to be highly effective at reducing dimensionality for real-valued datasets while retaining attribute semantics. In fuzzy rough sets, the concept of crisp equivalence classes is extended by fuzzy similarity relations, and real-valued similarity measures can be captured between data instances in terms of their attribute values. Therefore, it is desirable to study the aggregation of fuzzy similarity relations to reflect the interactions between attributes. This paper presents an approach that employs OWA aggregation of fuzzy similarity relations to better perform FRFS. A high degree of modelling flexibility is provided by choosing the stress function in OWA. Experimental studies demonstrate that through using different stress functions, different features may be selected; and that given an appropriate stress function, the quality of selected features can improve over that achievable by the state-of-the-art FRFS, in performing classification tasks.
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