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Building fuzzy graphs: features and taxonomy of learning for non-grid-oriented fuzzy rule-based systems

机译:建立模糊图:非基于网格模糊规则的学习的特征和分类

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The use of Mamdani-type fuzzy rule-based Systems (FRBSs) allows us to deal with the modeling of systems building a linguistic model clearly interpretable by human beings. However, the accuracy obtained is not sometimes as good as desired. This fact relates to the restriction imposed when using linguistic variables, which forces the membership functions considered in each fuzzy linguistic rule to belong to a common set of them, i.e., to use a global grid. To solve this problem, in the last few years a new variant has been proposed working directly with fuzzy variables in the fuzzy rules instead of linguistic terms, thus ignoring the said restriction. Therefore, these systems, which are totally equivalent to fuzzy graphs (defined by Zadeh as granular representations of functional dependencies and relations), do not consider a global grid and could be named non-grid-oriented (NGO) FRBSs. Of course, the main objective of these models is the accuracy of the system instead its interpretability. Until now, NGO FRBSs have been little considered and developed in the literature. However, and due to their good accuracy, their use is increasing thus making necessary a wide analysis on the features and associated learning methods in the NGO domain. This contribution aims at analyzing the structure and framework of NGO FRBSs, as well as making a taxonomy of learning methods considering the constrains imposed on the fuzzy sets in the generation process. Some automatic learning techniques and methods proposed in the literature to build these fuzzy graphs will be also reviewed and analyzed when solving several applications of different nature.
机译:使用Mamdani型模糊规则的系统(FRBS)允许我们处理构建语言模型的系统建模,这些模型明显地由人类解释。然而,所获得的精度有时不如所需的那么好。这一事实涉及使用语言变量时施加的限制,这迫使每个模糊语言规则中考虑的隶属函数属于它们的常见集,即使用全局网格。为了解决这个问题,在过去几年中,已经提出了一种新的变体,在模糊规则中直接与模糊的变量一起工作而不是语言术语,从而忽略了所述限制。因此,这些系统完全等同于模糊图(由Zadeh定义为功能依赖性和关系的粒状表示),不考虑全局网格,并且可以将非网格导向(NGO)FRBS命名。当然,这些模型的主要目标是系统的准确性而不是其解释性。到目前为止,非政府组织FRBS已经很少考虑和在文献中发展。然而,由于它们的良好准确性,它们的使用正在增加,因此对非政府组织域中的特征和相关的学习方法进行了许多广泛的分析。这一贡献旨在分析非政府组织FRBS的结构和框架,以及考虑到生成过程中模糊集上的约束,制定学习方法的分类。在求解不同性质的若干应用时,还将审查和分析文献中提出的一些自动学习技术和方法。

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