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A hierarchical approach to multi-class fuzzy classifiers

机译:多类模糊分类器的分层方法

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In this paper we present a hierarchical approach for generating fuzzy rules directly from data in a simple and effective way. The fuzzy classifier results from the union of fuzzy systems, employing the Wang and Mendel algorithm, built on input regions increasingly smaller, according to a multi-level grid-like partition. Key parameters of the proposed method are optimized by means of a genetic algorithm. Only the necessary partitions are built, in order to guarantee high interpretability and to avoid the explosion of the number of rules as the hierarchical level increases. We apply our method to real-world data collected from a photovoltaic (PV) installation so as to linguistically describe how the temperature of the PV panel and the irradiation relate to the class (tow, medium, high) of the energy produced by the panel. The obtained mean and maximum classification percentages on 30 repetitions of the experiment are 97.38% and 97.91%, respectively. We also apply our method to the classification of some well-known benchmark datasets and show how the achieved results compare favourably with those obtained by other authors using different techniques.
机译:在本文中,我们提出了一种以简单有效的方式直接从数据直接生成模糊规则的分层方法。模糊分类器是根据模糊系统的结合而产生的,该模糊系统采用Wang和Mendel算法,并建立在一个逐渐变小的输入区域上(根据多级网格状分区)。该方法的关键参数通过遗传算法进行了优化。仅构建必要的分区,以确保高度的可解释性,并避免随着层次结构级别的增加而增加规则数量。我们将我们的方法应用于从光伏(PV)装置收集的真实数据,以便从语言上描述光伏面板的温度和辐射如何与面板产生的能量的类别(丝束,中,高)相关。在30次重复实验中获得的平均分类率和最大分类率分别为97.38%和97.91%。我们还将我们的方法应用于一些知名基准数据集的分类,并显示所获得的结果与其他作者使用不同技术所获得的结果相比具有优势。

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