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Autocorrelation-based fuzzy clustering of time series

机译:基于自相关的时间序列模糊聚类

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摘要

The traditional approaches to clustering a set of time series are generally applicable if there is a fixed underlying structure to the time series so that each will belong to one cluster or the other. However, time series often display dynamic behaviour in their evolution over time. This dynamic behaviour should be taken into account when attempting to cluster time series. For instance, during a certain period, a time series might belong to a certain cluster; afterwards its dynamics might be closer to that of another cluster. In this case, the traditional clustering approaches are unlikely to find and represent the underlying structure in the given time series. This switch from one time state to another, which is typically vague, can be naturally treated following a fuzzy approach. This paper proposes a fuzzy clustering approach based on the autocorrelation functions of time series, in which each time series is not assigned exclusively to only one cluster, but it is allowed to belong to different clusters with various membership degrees.
机译:如果时间序列有固定的基础结构,则传统的将时间序列集合聚类的方法通常适用,这样每个方法都属于一个聚类。但是,时间序列通常会随着时间的推移显示动态行为。尝试对时间序列进行聚类时,应考虑这种动态行为。例如,在某个时间段内,时间序列可能属于某个集群。之后,它的动态可能会接近另一个集群。在这种情况下,传统的聚类方法不太可能找到并表示给定时间序列中的基础结构。从一个时间状态到另一个时间状态(通常是模糊的)的转换可以通过模糊方法自然地处理。本文提出了一种基于时间序列自相关函数的模糊聚类方法,其中每个时间序列不仅仅分配给一个聚类,而是允许其隶属于具有不同隶属度的不同聚类。

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