时间序列数据库周期挖掘的时间-位置连接方法

Chia-En Li, Ye-In Chang
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引用次数: 2

摘要

周期挖掘用于预测时间序列数据的趋势。有许多应用数据,包括温度,金融市场中描述的股票价格,基因表达数据分析等。一般来说,可以在时间序列数据中检测到三种类型的周期模式:(1)符号周期性,(2)序列周期性或部分周期性模式,(3)段或全周期周期性。Rasheed等人提出了一种周期性挖掘的两阶段方法。在第一阶段,他们使用后缀树在一次运行中生成所有三种周期性类型的候选周期模式。然而,我们发现这些后缀树相关的数据结构在生成候选周期模式时仍然是有效的。因此,本文采用以下方法对时间序列数据库进行周期性挖掘。在第一阶段候选模式生成的设计上,我们提出了时间-位置连接方法。仿真结果表明,我们的方法比他们的算法更有效。
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A Time-Position Join Method for Periodicity Mining in Time Series Databases
Periodicity mining is used for predicting trends intime series data. There are many applications data includingtemperature, stock prices depicted in the financial market, gene expression data analysis, etc. In general, there are threetypes of periodic patterns which can be detected in the timeseries data: (1) symbol periodicity, (2) sequence periodicityor partial periodic patterns, and (3) segment or full-cycleperiodicity. Rasheed et al. have proposed a two-phasesapproach to periodicity mining. In the first phase, they usethe suffix tree to produce candidate period patterns of allthree types of periodicity in a single run. However, we findthat those suffix-tree-related data structures are stillinefficient in generating candidates of period patterns. Therefore, in this paper, we use the following method forperiodicity mining in time series databases. On the design ofPhase 1 for generation of candidate patterns, we present ourtime-position join method. From the simulation results, weshow that our method is more efficient than their algorithm.
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