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Quantitative information architecture, granular computing and rough set models in the double-quantitative approximation space of precision and grade

机译:精度和等级的双量化近似空间中的定量信息体系结构,粒度计算和粗糙集模型

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Because precision and grade act as fundamental quantitative information in approximation space, they are used in relative and absolute quantifications, respectively. At present, the double quantification regarding precision and grade is a novel and valuable subject, but quantitative information fusion has become a key problem. Thus, this paper constructs the double-quantitative approximation space of precision and grade (PG-Approx-Space) and tackles the fusion problem using normal logical operations. It further conducts double- quantification studies on granular computing and rough set models. (1) First, for quantitative information organization and storage, we construct space and plane forms of PGApprox- Space using the Cartesian product, and for quantitative information extraction and fusion, we establish semantics construction and semantics granules of PG-Approx- Space. (2) Second, by granular computing, we investigate three primary granular issues: quantitative semantics, complete system and optimal calculation. Accordingly, six types of fundamental granules are proposed based on the semantic, microscopic and macroscopic descriptions; their semantics, forms, structures, calculations and relationships are studied, and the granular hierarchical structure is achieved. (3) Finally, we investigate rough set models in PG-Approx-Space. Accordingly, model regions are proposed by developing the classical regions, model expansion is systematically analyzed, some models are constructed as their structures are obtained, and a concrete model is provided. Based on the quantitative information architecture, this paper systematically conducts and investigates double quantification and establishes a fundamental and general exploration framework.
机译:由于精度和等级充当近似空间中的基本定量信息,因此它们分别用于相对和绝对定量。目前,关于精度和等级的双重量化是一个新颖而有价值的课题,但是定量信息融合已成为一个关键问题。因此,本文构造了精度和等级的双量化近似空间(PG-Approx-Space),并使用常规逻辑运算解决了融合问题。它还对粒度计算和粗糙集模型进行了双重量化研究。 (1)首先,对于定量信息的组织和存储,我们使用笛卡尔积构造PGApprox-Space的空间和平面形式,对于定量信息的提取和融合,我们建立PG-Approx-Space的语义构造和语义颗粒。 (2)其次,通过粒度计算,我们研究了三个主要的粒度问题:定量语义,完整系统和最优计算。因此,基于语义,微观和宏观描述,提出了六种基本颗粒。研究了它们的语义,形式,结构,计算和关系,并获得了粒度层次结构。 (3)最后,我们研究了PG-Approx-Space中的粗糙集模型。因此,通过开发经典区域来提出模型区域,系统地分析模型扩展,构造一些模型以获取其结构,并提供具体模型。本文基于定量信息架构,系统地进行和研究了双重量化,并建立了基础和通用的探索框架。

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