4.7 Article

Granular models as networks of associations of information granules: A development scheme via augmented principle of justifiable granularity

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APPLIED SOFT COMPUTING
卷 115, 期 -, 页码 -

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ELSEVIER
DOI: 10.1016/j.asoc.2021.108062

关键词

Augmented principle of justifiable granularity; Granular wrapper; Granular network; Granular inference scheme

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This study proposes an approach to construct granular models based on information granules in input and output spaces, consisting of two stages: constructing information granules in the input space and analyzing and quantifying the relationship between input data and formed information granules. Experimental results demonstrate the superior performance of the proposed granular model on synthetic and publicly available datasets, with comparative analysis supporting its effectiveness.
This study proposes an approach to the construction of granular models directly based on information granules expressed both in input and output spaces. Associating these information granules, the constructed granular models come in the framework of three layers networks: input granules, an inference scheme and output granules. The proposed approach consists of two stages. First, an augmented principle of justifiable granularity is proposed and applied to construct information granules in an input space. This principle constructs information granules not only through establishing a sound balance between two criteria, i.e., coverage and specificity, but also by optimizing those information granules on the basis of their homogeneity assessed with respect to data localized in output space. At the second stage, we propose an inference scheme by analyzing a location of an input datum in relation with the already formed information granules in an input space. The computed relation can be quantified as membership grades, thus yielding aggregation results involving information granules in an output space. The performance of the proposed granular model is supported by the mechanisms of granular computing and the principle of justifiable granularity. Experimental studies concerning synthetic and publicly available data are performed and some comparative analysis involving rule-based models is given. (C) 2021 Published by Elsevier B.V.

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