Fuzzy clustering and decision tree learning for time-series tidal data classification

Jiwen Chen, Jianhua Chen, G. Kemp
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Abstract

In this paper, a hybrid decision tree learning approach is presented that combines fuzzy C-means method and the ID3 algorithm in decision tree construction from continuous-valued features. The fuzzy C-means method is applied to find a number of central means for each continuous-valued feature and thus discretize such features. The ID3 algorithm is subsequently used to build a decision tree from the discretized data. Preliminary experiments using a real-world time-series data set from the Louisiana coast are reported that compare our method with the OC1 system for oblique decision tree learning. The experiment results seem to suggest that the proposed hybrid method achieves better or comparable classification accuracy.
模糊聚类与决策树学习在时序潮汐数据分类中的应用
本文提出了一种结合模糊c均值法和ID3算法的混合决策树学习方法,用于构造连续值特征的决策树。采用模糊c均值方法为每个连续值特征找到若干个中心均值,从而将这些特征离散化。然后使用ID3算法从离散数据中构建决策树。使用来自路易斯安那州海岸的真实世界时间序列数据集进行初步实验,将我们的方法与OC1系统进行倾斜决策树学习的比较。实验结果似乎表明,所提出的混合方法取得了更好或相当的分类精度。
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