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ON THE MEASUREMENT OF TL -FUZZY ROUGH SETS

机译:关于TL -Fuzzy粗糙集的测量

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摘要

In fuzzy rough sets a fuzzy T-similarity relation is employed to describe the degree of similarity between two objects and to construct lower and upper approximations for arbitrary fuzzy sets. Different triangular norm T identifies different point of view of similarity. Thus reasonable selection of triangular norm is clearly meaningful to practical applications of fuzzy rough sets. In this paper we first discuss the selection of triangular norm and emphasize the well-known Lukasiewicz's triangular norm TL as a reasonable selection. We then propose a function for each approximation operator in TL -fuzzy rough sets to measure its approximating ability. The measurement functions of lower and upper approximation operators are natural generalizations of belief and plausibility functions in the evidence theory respectively. By using these two functions, accuracy measure, roughness degree, entropy and conditional entropy are defined for TL - fuzzy rough sets.
机译:在模糊粗糙设置中,采用模糊T-相似关系来描述两个物体之间的相似度,并构造用于任意模糊集的下近似和上近似。不同的三角形常规t识别不同的相似性观点。因此,合理选择三角形规范对于模糊粗糙集的实际应用明显意义。在本文中,我们首先讨论了三角形规范的选择,并强调了众所周知的Lukasiewicz的三角标准TL作为合理的选择。然后,我们为TL -Fuzzy粗糙集中的每个近似运算符提出了一个功能,以测量其近似能力。下近似运营商的测量功能分别是证据理论中信仰和合理性功能的自然概括。通过使用这两个功能,为TL - 模糊粗糙集定义了准确度,粗糙度,熵和条件熵。

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