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Dependence space of topology and its application to attribute reduction

机译:拓扑依存空间及其在属性约简中的应用

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摘要

Attribute reduction plays an important role in pattern recognition and machine learning. Covering-based rough sets, as a technique of granular computing, can be a useful tool for studying attribute reduction. Topology has a close relationship with rough sets and plays a significant role in attribute reduction in information systems. So it is meaningful to combine topology with rough sets to address the problems of attribute reduction. In this paper, we mainly discuss and address the problem of attribute reduction in incomplete information systems with dependence space induced by topological base. Firstly, we investigate the topological structure induced by covering-based rough sets and some characteristics of the topological structure are presented. Secondly, a new type of dependence space is constructed in terms of the base of topological structure, and some characteristics of the dependence space are investigated. Finally, we apply the obtained results of the space to the attribute reduction in incomplete information systems. Especially, a discernibility matrix is defined for the attribute reduction in incomplete information systems.
机译:属性约简在模式识别和机器学习中起着重要作用。基于覆盖的粗糙集,作为粒度计算的一种技术,可能是研究属性约简的有用工具。拓扑与粗糙集有密切关系,并且在信息系统的属性约简中起着重要作用。因此,将拓扑与粗糙集相结合以解决属性约简问题非常有意义。在本文中,我们主要讨论并解决拓扑基础引起的具有依赖空间的不完整信息系统的属性约简问题。首先,我们研究了基于覆盖的粗糙集引起的拓扑结构,并提出了一些拓扑结构的特征。其次,根据拓扑结构的基础构造了一种新型的依存空间,并研究了依存空间的一些特征。最后,我们将获得的空间结果应用于不完整信息系统中的属性约简。特别是,为不完整信息系统中的属性约简定义了可分辨矩阵。

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