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Understanding the Inference Mechanism of FURIA by means of Fingrams

机译:通过尖射来了解毛纤维的推理机制

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This paper shows the use of Fingrams -Fuzzy Inference-grams-aimed at unveiling graphically some hidden details in the usual behavior of the precise fuzzy modeling algorithm FURIA -Fuzzy Unordered Rule Induction Algorithm-. FURIA is recognized as one of the most outstanding fuzzy rule-based classification methods attending to accuracy. Although FURIA usually produces compact rule bases, with low number of rules and antecedents per rule, its interpretability is arguable, being penalized by the absence of linguistic readability and a complex inference mechanism. Fingrams offer a methodology for visual representation and exploratory analysis of fuzzy rule-based systems. FURIA-Fingrams, i.e. fuzzy inference-grams representing fuzzy systems learnt with FURIA, make easier understanding the FURIA inference mechanism thanks to the possibilities they offer: detecting instances not covered by any rule; highlighting important rules; clarifying the so-called stretching mechanism; etc.
机译:本文展示了FingRams-Fuzzy推理 - 克 - 旨在在精确模糊建模算法Furia-Cuzzy无序规则感应算法的常规行为中揭示图形的一些隐藏细节。富富被认为是参加准确性的最出色的模糊规则的分类方法之一。虽然富菲岛通常生产紧凑规则基础,但每条规则的规则和前一种规则较少,但其可解释性是可以说的,因为没有语言可读性和复杂的推理机制而受到惩罚。 FingRams为基于模糊规则的系统的视觉表示和探索性分析提供了一种方法。 I.E. i.E.代表模糊系统的模糊推理克,这使得更容易理解富富推导机制,因为他们提供的可能性:检测未被任何规则所涵盖的实例;突出重要规则;澄清所谓的拉伸机构;等等。

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