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A new fuzzy classifier with triangular membership functions

机译:具有三角隶属函数的新型模糊分类器

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Fuzzy logic is widely applied in control and modeling for its robustness, simplicity and clarity. It is also applied in classifier design with rules directly generated from numerical data. Some available rule generation methods, however, are either too complicated to implement or impractical for high dimensions. In this paper, we propose a new fuzzy classifier architecture. At the very beginning the training data is clustered at the input space. Fuzzy sets are then defined based on these clusters with triangular membership function. The outputs in the rule conclusion are initially determined by the "normalized vote" in the corresponding cluster. Fuzzy sets and conclusions can be adjusted through training. The proposed fuzzy system is simple in structure, and can be fast trained and easily implemented. Its classification performance is generally better than artificial neural network.
机译:模糊逻辑广泛应用于控制和建模,以实现其鲁棒性,简单性和清晰度。它还应用于分类器设计,具有从数值数据直接生成的规则。然而,一些可用的规则生成方法太复杂,无法实现或不切实际地实现高维度。在本文中,我们提出了一种新的模糊分类器架构。在开始时,训练数据在输入空间群集。然后基于具有三角形隶属函数的这些集群来定义模糊集。规则结论中的输出最初由相应群集中的“标准化投票”确定。模糊套和结论可以通过培训进行调整。建议的模糊系统结构简单,可以快速培训,易于实现。其分类性能通常比人工神经网络更好。

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