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首页> 外文期刊>Information Sciences: An International Journal >Inclusion measure-based multi-granulation decision-theoretic rough sets in multi-scale intuitionistic fuzzy information tables
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Inclusion measure-based multi-granulation decision-theoretic rough sets in multi-scale intuitionistic fuzzy information tables

机译:基于尺寸的多粒状决策 - 在多尺度直觉模糊信息表中的多颗粒决策 - 理论粗糙集

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摘要

Multi-granulation rough sets (MGRSs) and decision-theoretic rough sets (DTRSs) are important and popular extended types of Pawlak's classical rough set model. Multi-granulation DTRSs (MG-DTRSs), which combine these two generalized rough set models, have been investigated in depth in recent years to handle noisy distributed data. However, this combination cannot be used to acquire knowledge from multi-scale information systems, in which an object may take on different values under the same attribute depending on the scale used to measure it. Two novel types of MG-DTRSs in multi-scale intuitionistic fuzzy (IF) information tables have been developed on the basis of IF inclusion measures in this study to solve this problem. First, we introduce a type of inclusion measure between two IF sets and present the concept of inclusion measure-based DTRSs in multi-scale IF information tables. Second, we present the inclusion measure-based optimistic and pessimistic MG-DTRSs in multi-scale IF information tables, examine their properties, and analyze the three-way decision method based on the presented models. Third, we define the optimal scale selection and present the two optimal scale selection algorithms based on MG-DTRSs in multi-scale IF information tables. Fourth, we provide the reducts of the optimal scales based on MG-DTRSs in multi-scale IF information tables, examine the discernibility function reduction method, and devise two algorithms for computing an optimal approximation scale reduct. Finally, we discuss several possible generalizations related to MG-DTRSs in multi-scale IF information tables. This study provides an MG-DTRS method for acquiring knowledge from multi-scale IF information tables. (C) 2018 Elsevier Inc. All rights reserved.
机译:多粒状粗糙集(MGRS)和决策理论粗糙集(DTRSS)是重要的,流行的扩展类型的PAWLAK的经典粗糙集模型。近年来,在近年来,已经在深入调查了这两个推广粗糙集模型的多粒状DTRSS(MG-DTRSS)以处理嘈杂的分布式数据。然而,这种组合不能用于从多尺度信息系统获取知识,其中对象可以根据用于测量它的比例来接受相同的属性下的不同值。在本研究中的包含措施,以解决这一问题的基础上,已经开发了两种新型的多级直觉模糊(IF)信息表中的MG-DTRSS。首先,我们在两个装置之间介绍了一种在两个之间的包含测量值,并在多刻度信息表中呈现包含基于量度的DTR的概念。其次,我们在多尺度中介绍了基于含量的基于乐观和悲观的MG-DTRS,如果信息表,检查其属性,并根据所提出的模型分析三元决策方法。第三,我们定义了最佳刻度选择,并以多刻度信息表的基于MG-DTRSS的两个最优比例选择算法。第四,我们提供基于MG-DTR的最佳尺度的变化,以多刻度的IF信息表,检查可辨别功能还原方法,并设计两个用于计算最佳近似尺度的算法。最后,我们讨论了与多尺度IF信息表中的MG-DTRS相关的几种可能的概括。本研究提供了用于从多尺度信息表获取知识的MG-DTRS方法。 (c)2018年Elsevier Inc.保留所有权利。

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