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Enhancing Multiclass Classification in FARC-HD Fuzzy Classifier: On the Synergy Between $n$-Dimensional Overlap Functions and Decomposition Strategies

机译:在Farc-HD模糊分类器中增强多字符分类:在$ n $ -dimensional重叠功能和分解策略之间的协同作用

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摘要

There are many real-world classification problems involving multiple classes, e.g., in bioinformatics, computer vision or medicine. These problems are generally more difficult than their binary counterparts. In this scenario, decomposition strategies usually improve the performance of classifiers. Hence, in this paper we aim to improve the behaviour of FARC-HD fuzzy classifier in multi-class classification problems using decomposition strategies, and more specifically One-vs-One (OVO) and One-vs-All (OVA) strategies. However, when these strategies are applied on FARC-HD a problem emerges due to the low confidence values provided by the fuzzy reasoning method. This undesirable condition comes from the application of the product t-norm when computing the matching and association degrees, obtaining low values, which are also dependent on the number of antecedents of the fuzzy rules. As a result, robust aggregation strategies in OVO such as the weighted voting obtain poor results with this fuzzy classifier. In order to solve these problems, we propose to adapt the inference system of FARC-HD replacing the product t-norm with overlap functions. To do so, we define n-dimensional overlap functions. The usage of these new functions allows one to obtain more adequate outputs from the base classifiers for the subsequent aggregation in OVO and OVA schemes. Furthermore, we propose a new aggregation strategy for OVO to deal with the problem of the weighted voting derived from the inappropriate confidences provided by FARC-HD for this aggregation method. The quality of our new approach is analyzed using twenty datasets and the conclusions are supported by a proper statistical analysis. In order to check the usefulness of our proposal, we carry out a comparison against some of the state-of-the-art fuzzy classifiers. Experimental results show the competitiveness of our method.
机译:存在许多现实世界分类问题,涉及多个类,例如,在生物信息学,计算机视觉或医学中。这些问题通常比其二进制对应物更困难。在这种情况下,分解策略通常提高分类器的性能。因此,在本文中,我们的目标是使用分解策略来改善Farc-HD模糊分类器在多级分类问题中的行为,更具体地是一对一(ovo)和一vs-全(OVA)策略。然而,当这些策略应用于Farc-HD时,由于模糊推理方法提供的低置信度值,因此出现了问题。当计算匹配和关联度时,这种不良情况来自产品T-Norm的应用,获得低值,这也取决于模糊规则的前提的数量。因此,ovo中的强大聚合策略,如加权投票,使用该模糊分类器获得差的结果。为了解决这些问题,我们建议适应Farc-HD的推理系统,更换具有重叠功能的产品T界。为此,我们定义了n维重叠函数。这些新功能的使用允许人们从基本分类器中获取更适用于OVO和OVA方案的基本分类器。此外,我们提出了一个新的ovo聚合策略,以应对来自Farc-HD提供的不适当信票的加权投票问题,以获得这种聚合方法。使用20个数据集分析了我们新方法的质量,并通过适当的统计分析来支持结论。为了检查我们提案的有用性,我们对某些最先进的模糊分类器进行了比较。实验结果表明了我们方法的竞争力。

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