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Adaptive Fuzzy Clustering of Short Time Series with Unevenly Distributed Observations in Data Stream Mining Tasks

机译:数据流挖掘任务中具有不均匀分布观测值的短时间序列的自适应模糊聚类

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In the paper, adaptive modifications of fuzzy clustering methods have been proposed for solving the problem of data stream mining in online mode. The clustering-segmentation task of short time series with unevenly distributed observations (at the same time in all samples) is considered. The proposed approach for adaptive fuzzy clustering of data stream is sufficiently simple in numerical implementation and is characterised by a high speed of information processing. The computational experiments have confirmed the effectiveness of the developed approach.
机译:为了解决在线模式下数据流挖掘的问题,提出了模糊聚类方法的自适应改进方案。考虑了具有不均匀分布的观测值的短时间序列的聚类分割任务(在所有样本中同时)。所提出的用于数据流的自适应模糊聚类的方法在数值实现上足够简单,并且特征在于信息处理的高速。计算实验已经证实了所开发方法的有效性。

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