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Modified Uncertainty Measure of Rough Fuzzy Sets from the Perspective of Fuzzy Distance

机译:从模糊距离视角下修改了粗糙模糊集的不确定性度量

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As an extension of Pawlak’s rough sets, rough fuzzy sets are proposed to deal with fuzzy target concept. As we know, the uncertainty of Pawlak’s rough sets is rooted in the objects contained in the boundary region, while the uncertainty of rough fuzzy sets comes from three regions (positive region, boundary region, and negative region). In addition, in the view of traditional uncertainty measures, the two rough approximation spaces with the same uncertainty are not necessarily equivalent, and they cannot be distinguished. In this paper, firstly, a fuzziness-based uncertainty measure is proposed. Meanwhile, the essence of the uncertainty for rough fuzzy sets and its three regions in a hierarchical granular structure is revealed. Then, from the perspective of fuzzy distance, we introduce a modified uncertainty measure based on the fuzziness-based uncertainty measure and present that our method not only is strictly monotonic with finer approximation spaces, but also can distinguish the two rough approximation spaces with the same uncertainty. Finally, a case study is introduced to demonstrate that the modified uncertainty measure is more suitable for evaluating the significance of attributes. These works are useful for further study on rough sets theory and promote the development of uncertain artificial intelligence.
机译:作为帕夫拉克&#x2019的的延伸; S粗集,提出了粗糙模糊集处理模糊目标概念。正如我们所知,帕夫拉克&#x2019的不确定性; S粗糙集植根于包含在边界区域中的对象,而粗糙模糊集的不确定性来自于三个区域(正区域,边界区域和负区域)。此外,在传统的不确定性的措施来看,以相同的不确定性两个粗糙近似空间不一定是等价的,它们无法区分。在本文中,首先,基于模糊不确定性的措施建议。同时,在分级粒状结构粗糙模糊集及其三个地区的不确定性的本质显露。然后,从模糊距离的角度,介绍了基于基于模糊不确定性的措施和存在的修改不确定性的措施,我们的方法不仅是用更精细的近似空间严格单调,但也可以用相同的区分两种粗糙近似空间不确定。最后,一个案例被引入到证明,修改后的不确定性度量,更适合用于评估属性的重要性。这些作品是粗糙集理论的进一步研究有用,促进不确定人工智能的发展。

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