A locally optimal algorithm for estimating a generating partition from an observed time series

David J. Miller, Najah F. Ghalyan, A. Ray
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引用次数: 1

Abstract

Estimation of a generating partition is critical for symbolization of measurements from discrete-time dynamical systems, where a sequence of symbols from a (finite-cardinality) alphabet uniquely specifies the underlying time series. Such symbolization is useful for computing measures (e.g., Kolmogorov-Sinai entropy) to characterize the (possibly unknown) dynamical system. It is also useful for time series classification and anomaly detection. Previous work attemps to minimize a clustering objective function that measures discrepancy between a set of reconstruction values and the points from the time series. Unfortunately, the resulting algorithm is non-convergent, with no guarantee of finding even locally optimal solutions. The problem is a heuristic “nearest neighbor” symbol assignment step. Alternatively, we introduce a new, locally optimal algorithm. We apply iterative “nearest neighbor” symbol assignments with guaranteed discrepancy descent, by which joint, locally optimal symbolization of the time series is achieved. While some approaches use vector quantization to partition the state space, our approach only ensures a partition in the space consisting of the entire time series (effectively, clustering in an infinite-dimensional space). Our approach also amounts to a novel type of sliding block lossy source coding. We demonstrate improvement, with respect to several measures, over a popular method used in the literature.
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从观测时间序列估计生成分区的局部最优算法
生成分区的估计对于离散时间动力系统测量的符号化是至关重要的,其中来自(有限基数)字母表的符号序列唯一地指定了底层时间序列。这样的符号化对于计算度量(例如,Kolmogorov-Sinai熵)来描述(可能未知的)动力系统是有用的。对于时间序列分类和异常检测也很有用。先前的工作试图最小化聚类目标函数,该函数测量一组重建值与时间序列中的点之间的差异。不幸的是,得到的算法是不收敛的,甚至不能保证找到局部最优解。该问题是一个启发式的“最近邻”符号分配步骤。或者,我们引入一种新的局部最优算法。我们采用保证差异下降的迭代“最近邻”符号分配,通过该方法实现了时间序列的联合、局部最优符号化。虽然有些方法使用矢量量化来划分状态空间,但我们的方法只确保在由整个时间序列组成的空间中进行划分(有效地,在无限维空间中聚类)。我们的方法也相当于一种新型的滑动块有损源编码。我们证明了改进,就几个措施,在文献中使用的一种流行的方法。
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