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An Uncertainty Measure Based on Lower and Upper Approximations for Generalized Rough set Models

机译:广义粗糙集模型基于上下近似的不确定性测度

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摘要

Uncertainty measures are an important tool for analyzing data. There is the uncertainty of a rough set caused by its boundary region in rough set models. Thus the uncertainty measurement issue is also an important topic for rough set theory. Shannon entropy has been introduced into rough set theory. However, there are relatively few studies on the uncertainty measure in generalized rough set models. We know that the boundary region of a rough set is closely related to the upper and lower approximations in rough set models. In this paper, from the viewpoint of the upper and lower approximations, we propose new uncertainty measures, the upper rough entropy and the lower rough entropy, in generalized rough set models. Then we focus on the investigations of the upper rough entropy, and give the concepts of the upper joint entropy, the upper conditional entropy and the mutual information with respect to a general binary relation. Some important properties of these measures are obtained. The connections among these measures are given. Furthermore, comparing with the existing uncertainty measures, the upper rough entropy has high distinguishing degree. Theoretical analysis and experimental results show that the proposed entropy is better effective than some existing measures.
机译:不确定性度量是分析数据的重要工具。在粗糙集模型中,由粗糙集的边界区域引起的不确定性。因此,不确定性测量问题也是粗糙集理论的重要课题。香农熵已被引入粗糙集理论。但是,关于广义粗糙集模型中不确定性度量的研究相对较少。我们知道,粗糙集的边界区域与粗糙集模型中的上下近似密切相关。本文从上下近似的角度出发,在广义粗糙集模型中提出了新的不确定性度量,即上层粗糙熵和下层粗糙熵。然后,我们着重研究上层粗糙熵,并给出关于一般二元关系的上层联合熵,上层条件熵和互信息的概念。获得了这些措施的一些重要特性。给出了这些措施之间的联系。此外,与现有的不确定性度量相比,上层粗糙熵具有较高的辨识度。理论分析和实验结果表明,所提出的熵比现有的一些方法更好。

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