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Logical Disjunction Double-Quantitative Fuzzy Rough Sets

机译:逻辑求和双定量模糊粗糙集

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The variable precision rough set model mainly utilizes a controlled degree of misclassiffication between the concept and equivalence classes namely relative quantitative information to approximate a concept. And the graded rough set approximates a concept through internal and external inclusion degrees between the concept and equivalence classes namely absolute quantitative information. Both variable precision and graded rough sets can be used to handle databases with misclassiffication. However, these two models could not effectively handle the real-valued datasets because discretizing will lead to information loss. Therefore, we study the rough set theory by bidirectional quantization under fuzzy relations. Firstly, a logical disjunction double-quantitative fuzzy rough set model is proposed based on the bidirectional quantization. Secondly, we analyze relationships between approximations and different rough regions in the new model. Meanwhile, several important theorems are given to deepen understanding of related concepts. Finally, a medical data case is used to illustrate the importance of the study.
机译:可变精度粗糙集模型主要利用概念和等效类(即相对定量信息)之间可控制的误分类程度来近似概念。分级的粗糙集通过概念和等价类(即绝对定量信息)之间的内部和外部包含度来近似一个概念。可变精度和分级粗糙集均可用于处理分类错误的数据库。但是,这两个模型不能有效地处理实值数据集,因为离散化将导致信息丢失。因此,我们在模糊关系下通过双向量化研究了粗糙集理论。首先,提出了一种基于双向量化的逻辑析取双定量模糊粗糙集模型。其次,我们分析了新模型中近似值与不同粗糙区域之间的关系。同时,给出了一些重要的定理,以加深对相关概念的理解。最后,使用医疗数据案例来说明研究的重要性。

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