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1d-SAX: A Novel Symbolic Representation for Time Series

机译:1d-SAX:时间序列的新颖符号表示

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SAX (Symbolic Aggregate approximation) is one of the main symbolization techniques for time series. A well-known limitation of SAX is that trends are not taken into account in the symbolization. This paper proposes 1d-SAX a method to represent a time series as a sequence of symbols that each contain information about the average and the trend of the series on a segment. We compare the efficiency of SAX and 1d-SAX in terms of goodness-of-fit, retrieval and classification performance for querying a time series database with an asymmetric scheme. The results show that 1d-SAX improves performance using equal quantity of information, especially when the compression rate increases.
机译:SAX(符号集合近似)是时间序列的主要符号化技术之一。 SAX的一个众所周知的局限性是在符号化中没有考虑趋势。本文提出了一种1d-SAX方法,将时间序列表示为一系列符号,每个符号包含有关分段上该序列的平均值和趋势的信息。我们以非对称方案查询时间序列数据库的拟合优度,检索和分类性能方面比较了SAX和1d-SAX的效率。结果表明,1d-SAX使用相等数量的信息可以提高性能,尤其是在压缩率提高时。

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