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首页> 外文期刊>International Journal of Uncertainty, Fuzziness, and Knowledge-based Systems >HANDLING HIGHLY-DIMENSIONAL CLASSIFICATION TASKS WITH HIERARCHICAL GENETIC FUZZY RULE-BASED CLASSIFIERS
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HANDLING HIGHLY-DIMENSIONAL CLASSIFICATION TASKS WITH HIERARCHICAL GENETIC FUZZY RULE-BASED CLASSIFIERS

机译:使用基于层次遗传模糊规则的分类器来处理高维分类任务

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摘要

Many modern classification tasks are defined in highly-dimensional feature spaces. The derivation of high-performing genetic fuzzy rule-based classification systems (GFRBCSs) in such scenarios is a non-trivial task. This paper presents a framework for increasing the performance of GFRBCSs by creating a hierarchical fuzzy rule-based classifier. The proposed system is constructed through repeated invocations to a base GFRBCS procedure, considering at each step an input space fuzzy partition of a certain granularity. The best performing rules are inserted in the hierarchical rule base and the process is repeated again, considering a thicker granularity. The employed boosting scheme guides the algorithm in creating new rules to treat uncovered or misclassified patterns, thus monotonically increasing the performance of the classifier. Extensive experimental analysis in a number of real-world high-dimensional classification tasks proves the effectiveness of the proposed approach in increasing the performance of the base classifier, maintaining its interpretability to a considerable degree.
机译:许多现代分类任务是在高维特征空间中定义的。在这种情况下,派生出高性能的基于遗传模糊规则的分类系统(GFRBCS)是一项艰巨的任务。本文提出了一个通过创建基于层次模糊规则的分类器来提高GFRBCS性能的框架。所提出的系统是通过重复调用基本GFRBCS程序而构造的,在每个步骤都考虑了一定粒度的输入空间模糊分区。考虑到更粗的粒度,将性能最佳的规则插入到分层规则库中,然后再次重复该过程。所采用的提升方案指导算法创建新规则,以处理未发现或分类错误的模式,从而单调提高分类器的性能。在许多现实世界中的高维分类任务中进行的广泛实验分析证明了该方法在提高基本分类器性能的同时,在很大程度上保持了其可解释性的有效性。

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