演化出一致、完整、紧凑的模糊规则集用于分类问题

J. Casillas, A. Orriols-Puig, Ester Bernadó-Mansilla
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引用次数: 9

摘要

本文提出了Pitts-DNF-C,这是一个多目标匹兹堡式学习分类器系统,它进化出一组dnf类型的分类任务模糊规则。该系统明确地设计为只探索导致一致、完整和紧凑的规则集而没有冗余和不一致的解决方案。在一组真实世界的数据集上分析了系统的行为,显示了它在性能和可解释性方面相对于其他三个模糊学习器的竞争力。
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Toward evolving consistent, complete, and compact fuzzy rule sets for classification problems
This paper proposes Pitts-DNF-C, a multi- objective Pittsburgh-style Learning Classifier System that evolves a set of DNF-type fuzzy rules for classification tasks. The system is explicitly designed to only explore solutions that lead to consistent, complete, and compact rule sets without redundancies and inconsistencies. The behavior of the system is analyzed on a collection of real-world data sets, showing its competitiveness in terms of performance and interpretability with respect to three other fuzzy learners.
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