Certain models of granular computing based on rough fuzzy approximations

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Abstract

An extraction of granular structures using graphs is a powerful mathematical framework in human reasoning and problem solving. The visual representation of a graph and the merits of multilevel or multiview of granular structures suggest the more effective and advantageous techniques of problem solving. In this research study, we apply the combinative theories of rough fuzzy sets and rough fuzzy digraphs to extract granular structures. We discuss the accuracy measures of rough fuzzy approximations and measure the distance between lower and upper approximations. Moreover, we consider the adjacency matrix of a rough fuzzy digraph as an information table and determine certain indiscernible relations. We also discuss some general geometric properties of these indiscernible relations. Further, we discuss the granulation of certain social network models using rough fuzzy digraphs. Finally, we develop and implement some algorithms of our proposed models to granulate these social networks.

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Akram, M., Luqman, A., & Al-Kenani, A. N. (2020). Certain models of granular computing based on rough fuzzy approximations. Journal of Intelligent and Fuzzy Systems, 39(3), 2797–2816. https://doi.org/10.3233/JIFS-191165

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