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Multigranulations Rough Set Method of Attribute Reduction in Information Systems Based on Evidence Theory

机译:基于证据理论的信息系统粗糙集粗糙集方法

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摘要

Attribute reduction is one of the most important problems in rough set theory. However, from the granular computing point of view, the classical rough set theory is based on a single granulation. It is necessary to study the issue of attribute reduction based on multigranulations rough set. To acquire brief decision rules from information systems, this paper firstly investigates attribute reductions by combining the multigranulations rough set together with evidence theory. Concepts of belief and plausibility consistent set are proposed, and some important properties are addressed by the view of the optimistic and pessimistic multigranulations rough set. What is more, the multigranulations method of the belief and plausibility reductions is constructed in the paper. It is proved that a set is an optimistic (pessimistic) belief reduction if and only if it is an optimistic (pessimistic) lower approximation reduction, and a set is an optimistic (pessimistic) plausibility reduction if and only if it is an optimistic (pessimistic) upper approximation reduction.
机译:属性约简是粗糙集理论中最重要的问题之一。然而,从粒度计算的角度来看,经典的粗糙集理论是基于单个粒度的。因此,有必要研究基于多粒度粗糙集的属性约简问题。为了从信息系统中获取简短的决策规则,本文首先将多粒度粗糙集与证据理论相结合,研究属性约简问题。提出了信念一致集和似然一致集的概念,并从乐观和悲观多粒度粗糙集的角度讨论了它们的一些重要性质。此外,本文还构造了信度和似然度约简的多粒度方法。证明了集是一个乐观(悲观)信念约简当且仅当它是一个乐观(悲观)下近似约简,集是一个乐观(悲观)似然约简当且仅当它是一个乐观(悲观)上近似约简。

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