Unsupervised segmentation of categorical time series into episodes

P. Cohen, Brent Heeringa, N. Adams
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引用次数: 30

Abstract

This paper describes an unsupervised algorithm for segmenting categorical time series into episodes. The VOTING-EXPERTS algorithm first collects statistics about the frequency and boundary entropy of ngrams, then passes a window over the series and has two "expert methods" decide where in the window boundaries should be drawn. The algorithm successfully segments text into words in four languages. The algorithm also segments time series of robot sensor data into subsequences that represent episodes in the life of the robot. We claim that VOTING-EXPERTS finds meaningful episodes in categorical time series because it exploits two statistical characteristics of meaningful episodes.
分类时间序列的无监督分割
本文描述了一种用于分类时间序列片段分割的无监督算法。VOTING-EXPERTS算法首先收集关于ngram的频率和边界熵的统计数据,然后在序列上传递一个窗口,并有两种“专家方法”来决定窗口边界应该在哪里绘制。该算法成功地将文本分割成四种语言的单词。该算法还将机器人传感器数据的时间序列分割成代表机器人生命周期的子序列。我们声称VOTING-EXPERTS在分类时间序列中发现有意义的事件,因为它利用了有意义事件的两个统计特征。
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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