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The unordered time series fuzzy clustering algorithm based on the adaptive incremental learning

机译:基于自适应增量学习的无序时间序列模糊聚类算法

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摘要

The data of time series are massive in quantity and not conducive to subsequent processing. Therefore, the unordered time series fuzzy clustering algorithm of adaptive incremental learning has been utilized to explore the segmentation of time series in further. The research results show that the emergence of incremental learning technology can solve such problems. Also, it can continuously accumulate and increase the data, as well as improving the learning accuracy. Incremental learning technology correctly processes, retains, and utilizes the historical results, thereby reducing the training time of new samples by using historical results. Therefore, the clustering algorithm mostly clusters the cluster-liked shape of discrete datasets and uses the hierarchical clustering algorithm, which is more suitable for measuring the similarity of time series, to replace the Euclidean distance for distance metric and hierarchical clustering. The distance matrix update method is improved to reduce the computational complexity, which proves that the algorithm has higher clustering validity and reduces the operating time of the algorithm.
机译:时间序列数据的数量巨大,不利于随后的处理。因此,已经利用了自适应增量学习的无序时间序列模糊聚类算法进一步探索时间序列的分割。研究结果表明,增量学习技术的出现可以解决这些问题。此外,它可以持续累积和增加数据,以及提高学习精度。增量学习技术正确地处理,保留并利用历史结果,从而通过使用历史结果来减少新样本的培训时间。因此,聚类算法大多数集群的离散数据集的聚类形状,并使用分层聚类算法,该分层聚类算法更适合测量时间序列的相似性,以替换距离度量和分层聚类的欧几里德距离。改进了距离矩阵更新方法以降低计算复杂性,证明算法具有更高的聚类有效性并降低算法的操作时间。

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