Discovering Synchronized Subsets of Sequences: A Large Scale Solution.

Evangelos Sariyanidi, Casey J Zampella, Keith G Bartley, John D Herrington, Theodore D Satterthwaite, Robert T Schultz, Birkan Tunc
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引用次数: 3

Abstract

Finding the largest subset of sequences (i.e., time series) that are correlated above a certain threshold, within large datasets, is of significant interest for computer vision and pattern recognition problems across domains, including behavior analysis, computational biology, neuroscience, and finance. Maximal clique algorithms can be used to solve this problem, but they are not scalable. We present an approximate, but highly efficient and scalable, method that represents the search space as a union of sets called ϵ-expanded clusters, one of which is theoretically guaranteed to contain the largest subset of synchronized sequences. The method finds synchronized sets by fitting a Euclidean ball on ϵ-expanded clusters, using Jung's theorem. We validate the method on data from the three distinct domains of facial behavior analysis, finance, and neuroscience, where we respectively discover the synchrony among pixels of face videos, stock market item prices, and dynamic brain connectivity data. Experiments show that our method produces results comparable to, but up to 300 times faster than, maximal clique algorithms, with speed gains increasing exponentially with the number of input sequences.

发现序列的同步子集:一个大规模的解决方案。
在大型数据集中,寻找关联超过一定阈值的序列(即时间序列)的最大子集,对于跨领域的计算机视觉和模式识别问题具有重要意义,包括行为分析,计算生物学,神经科学和金融。最大团算法可以用来解决这个问题,但它们是不可伸缩的。我们提出了一种近似但高效且可扩展的方法,该方法将搜索空间表示为称为ϵ-expanded集群的集合的并集,其中一个理论上保证包含最大的同步序列子集。该方法利用荣格定理,通过在ϵ-expanded簇上拟合欧几里得球来找到同步集。我们在面部行为分析、金融和神经科学三个不同领域的数据上验证了该方法,我们分别发现了面部视频像素、股票市场项目价格和动态大脑连接数据之间的同步性。实验表明,我们的方法产生的结果与最大团算法相当,但速度比最大团算法快300倍,并且速度增益随着输入序列的数量呈指数增长。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
43.50
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