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A concrete and rational approach for building type-2 fuzzy subsethood and similarity measures via a generalized foundational model

机译:通过广义基础模型建立2类模糊子集和相似性度量的具体而合理的方法

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Subsethood and similarity between fuzzy sets have always been intensely studied concepts in fuzzy set theory (FST). However, researches on subsethood and similarity for truly general type-2 fuzzy sets (T2FSs) have been comparatively scarce, because of the intrinsic difficulties of directly dealing with the secondary membership functions of very general nature. While the advent of the alpha-planeiz-slice representation by Mendel and his colleagues as well as by Wagner and Hagras has led to progress in confronting this challenge, there remains quite a number of limitations and unsolved issues. The contribution of this article is to utilize a generalized foundational model (introduced in Ngan, 2018) to construct T2FS subsethood and similarity measures as rationally, concretely and systematically as feasible, such that (i) these T2FS measures are applicable to truly general type-2 fuzzy sets, that (ii) the actions of these measures can be very simply understood, analyzed and even customized by the T2FS users, and that (iii) these T2FS measures can process and output results that appropriately maintain and reflect the high degree of fuzziness involved in T2FSs. Last but not least, for applications, (iv) these measures will be demonstrated on multiple criteria decision making and pattern recognition problems, and (v) in a brief sketch, we will illustrate how the generalized-foundational-model-based method of building T2FS subsethood and similarity measures can be adapted to building other T2FS measures that embrace the advantages described in (i), (ii) and (iii). (C) 2019 Elsevier Ltd. All rights reserved.
机译:模糊集之间的子集和相似性一直是模糊集理论(FST)中一直进行的深入研究。然而,由于直接处理非常通用的次要隶属函数的内在困难,对真正通用的第二类模糊集(T2FS)的子集和相似性的研究相对较少。尽管孟德尔和他的同事以及瓦格纳和哈格拉斯出现了alpha-planeiz-slice代表制,从而在应对这一挑战方面取得了进展,但仍然存在许多局限性和未解决的问题。本文的贡献是利用广义基础模型(于2018年在Ngan中引入)构造T2FS子集和相似性度量,以尽可能合理,具体和系统地构建,以便(i)这些T2FS度量适用于真正的通用类型- 2个模糊集,即(ii)T2FS用户可以非常简单地理解,分析甚至定制这些措施的行为,并且(iii)这些T2FS措施可以处理和输出适当地维持和反映高水平的结果。 T2FS涉及的模糊性。最后但并非最不重要的一点是,对于应用程序(iv)这些措施将在多准则决策和模式识别问题上得到证明,并且(v)在简短的草图中,我们将说明基于广义基础模型的构建方法T2FS子集和相似性度量可以进行调整,以构建包含(i),(ii)和(iii)中所述优点的其他T2FS度量。 (C)2019 Elsevier Ltd.保留所有权利。

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