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Recurrent Deep Divergence-based Clustering for Simultaneous Feature Learning and Clustering of Variable Length Time Series

机译:基于深度分歧的基于深度分歧的聚类,用于同时特征学习和可变长度时间序列聚类

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The task of clustering unlabeled time series and sequences entails a particular set of challenges, namely to adequately model temporal relations and variable sequence lengths. If these challenges are not properly handled, the resulting clusters might be of suboptimal quality. As a key solution, we present a joint clustering and feature learning framework for time series based on deep learning. For a given set of time series, we train a recurrent network to represent, or embed, each time series in a vector space such that a divergence-based clustering loss function can discover the underlying cluster structure in an end-to-end manner. Unlike previous approaches, our model inherently handles multivariate time series of variable lengths and does not require specification of a distance-measure in the input space. On a diverse set of benchmark datasets we illustrate that our proposed Recurrent Deep Divergence-based Clustering approach outperforms, or performs comparable to, previous approaches.
机译:聚类未标记的时间序列和序列的任务需要特定的挑战,即充分模型时间关系和可变序列长度。如果未正确处理这些挑战,则产生的集群可能具有次优质。作为一个关键解决方案,我们为基于深度学习的时间序列提供了一个联合聚类和特征学习框架。对于一组给定的时间序列,我们培训经常性网络以表示矢量空间中的每个时间序列,使得基于分歧的聚类损失函数可以以端到端的方式发现底层的集群结构。与以前的方法不同,我们的模型本质地处理多变量时间序列的可变长度,并且不需要在输入空间中规范距离测量。在各种基准数据集上,我们说明我们提出的基于经常性的深度分歧的聚类方法优越,或者与先前的方法相当。

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