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A rule-extraction framework under multigranulation rough sets

机译:多粒度粗糙集下的规则提取框架

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摘要

The multigranulation rough set (MGRS) is becoming a rising theory in rough set area, which offers a desirable theoretical method for problem solving under multigranulation environment. However, it is worth noticing that how to effectively extract decision rules in terms of multigranulation rough sets has not been more concerned. In order to address this issue, we firstly give a general rule-extraction framework through including granulation selection and granule selection in the context of MGRS. Then, two methods in the framework (i.e. a granulation selection method that employs a heuristic strategy for searching a minimal set of granular structures and a granule selection method constructed by an optimistic strategy for getting a set of granules with maximal covering property) are both presented. Finally, an experimental analysis shows the validity of the proposed rule-extraction framework in this paper.
机译:多粒度粗糙集(MGRS)正在成为粗糙集领域的一种新兴理论,为多粒度环境下的问题求解提供了理想的理论方法。但是,值得注意的是,如何根据多粒度粗糙集有效地提取决策规则并没有受到更多关注。为了解决这个问题,我们首先通过在MGRS的上下文中包括制粒选择和颗粒选择来给出一个通用的规则提取框架。然后,提出了框架中的两种方法(即采用启发式策略搜索最小的颗粒结构集的造粒选择方法和采用乐观策略构建的具有最大覆盖特性的颗粒集的颗粒选择方法) 。最后,通过实验分析证明了本文提出的规则提取框架的有效性。

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