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Cooperative fuzzy rulebase construction based on a novel fuzzy decision tree

机译:基于新型模糊决策树的合作模糊规则库构建

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Fuzzy Inference Systems (FIS) are much considerable due to their interpretability and uncertainty factors. Hence, Fuzzy Rule-Based Classifier Systems (FRBCS) are widely investigated in aspects of construction and parameter learning. Also, decision trees are recursive structures which are not only simple and accurate, but also are fast in classification due to partitioning the feature space in a multi-stage process. Combination of fuzzy reasoning and decision trees gathers capabilities of both systems in an integrated one. In this paper, a novel fuzzy decision tree (FDT) is proposed for extracting fuzzy rules which are both accurate and cooperative due to dependency structure of decision tree. Furthermore, a weighting method is used to emphasize the corporation of the rules. Finally, the proposed method is compared with a well-known rule construction method named SRC on 8 UCI datasets. Experiments show a significant improvement on classification performance of the proposed method in comparison with SRC.
机译:由于其可解释性和不确定性因素,模糊推理系统(FIS)非常重要。因此,在构造和参数学习方面对基于模糊规则的分类器系统(FRBCS)进行了广泛的研究。而且,决策树是递归结构,其不仅简单,准确,而且由于在多阶段过程中对特征空间进行了划分,因此分类速度也很快。模糊推理和决策树的组合在一个集成的系统中收集了两个系统的功能。本文提出了一种新颖的模糊决策树(FDT),用于提取由于决策树的相关性结构而精确且协同的模糊规则。此外,使用加权方法来强调规则的组合。最后,将所提出的方法与在8个UCI数据集上的著名规则构建方法SRC进行了比较。实验表明,与SRC相比,该方法在分类性能上有显着提高。

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