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A novel and fast MIMO fuzzy inference system based on a class of fuzzy clustering algorithms with interpretability and complexity analysis

机译:基于一类具有可解释性和复杂性分析的模糊聚类算法的新型快速MIMO模糊推理系统

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A data driven Fuzzy Inference System (FIS) employs Membership Functions (MFs) with adjustable parameters in its IF part to fuzzify the input data. The input space is partitioned simply by dividing universe of discourse of each input variable into some fuzzy subspaces. The MFs are then defined on the fuzzy subspaces of the input variables. Parameters of the MFs are tuned for maximum accuracy of the system (which demands high runtime) without considering the data structure which impairs interpretability of the FIS and degenerates the system into a black-box tool. Such a FIS does not represent actual structure of the data and its MFs are not necessarily in accord with the data distribution in the input space. In addition, the FIS suffers from exponential complexity of order on where T is number of linguistic terms (number of subspaces on the universe of discourse of input variables) and r is number of input variables. This article presents a novel Multiple-Input and Multiple-Output Clustering based Fuzzy Inference System (MIMO CFIS) which is made directly from a class of fuzzy clustering algorithms to overcome these shortcomings. CFIS identifies dense regions of the input data using fuzzy clustering and then places a cluster on each of these regions. These fuzzy clusters represent actual structure of the data and serve as fuzzy rules in the rule base of CFIS and provide MFs that exactly fit the dense regions of the data that makes the system more interpretable and avoids redundant rules. These MFs are normal, convex, and continuous and have no parameter to be tuned (which makes CFIS much faster than other FISs) and fuzzify the input data according to their membership in the clusters. THEN part of CFIS is generalized form of THEN part of Takagi-Sugeno (TS) fuzzy system which accommodates any function of input variables. Despite less number of adjustable parameters, testing error of CFIS is less than that of TS system and its modified versions. Moreover, number of fuzzy rules in CFIS rule base is the same as the number of linguistic terms (or fuzzy clusters) and consequently its complexity is of order O(T). Also, CFIS is a MIMO system and avoids inconsistent (contradictory) rules by generating well-separated fuzzy clusters whereas TS system is MISO and never guarantees generation of consistent rules. In addition, CFIS satisfies most of the interpretability criteria of FISs. (C) 2017 Elsevier Ltd. All rights reserved.
机译:数据驱动的模糊推理系统(FIS)在IF部分中使用具有可调整参数的隶属函数(MF),以模糊输入数据。只需将每个输入变量的论述范围划分为一些模糊子空间,即可对输入空间进行分区。然后在输入变量的模糊子空间上定义MF。调整MF的参数可最大程度地提高系统的准确性(这需要较高的运行时间),而无需考虑会损害FIS的可解释性并使系统退化为黑匣子工具的数据结构。这样的FIS不能代表数据的实际结构,其MF不一定与输入空间中的数据分布一致。另外,FIS遭受阶数的指数复杂性,其中T是语言术语的数量(输入变量所讨论的宇宙上的子空间的数量),r是输入变量的数量。本文提出了一种新颖的基于多输入多输出聚类的模糊推理系统(MIMO CFIS),该系统直接由一类模糊聚类算法构成,以克服这些缺点。 CFIS使用模糊聚类识别输入数据的密集区域,然后在每个这些区域上放置一个聚类。这些模糊聚类表示数据的实际结构,并充当CFIS规则库中的模糊规则,并提供与数据的密集区域完全匹配的MF,从而使系统更具解释性并避免了冗余规则。这些MF是正常的,凸的和连续的,并且没有要调整的参数(这使CFIS比其他FIS快得多),并根据它们在群集中的成员资格对输入数据进行模糊处理。 CFIS的THEN部分是Takagi-Sugeno(TS)模糊系统的THEN部分的广义形式,该系统可容纳任何输入变量功能。尽管可调参数的数量较少,但CFIS的测试误差小于TS系统及其修改版本的误差。此外,CFIS规则库中模糊规则的数量与语言术语(或模糊聚类)的数量相同,因此其复杂度约为O(T)。另外,CFIS是MIMO系统,通过生成分离良好的模糊聚类来避免不一致(矛盾)的规则,而TS系统是MISO,并且从不保证生成一致的规则。此外,CFIS满足FIS的大多数可解释性标准。 (C)2017 Elsevier Ltd.保留所有权利。

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