基于灰色马尔可夫Scgm(1,1)模型的时间序列数据相似性挖掘算法

Guoqiang Xiong, Qingjing Gao
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引用次数: 2

摘要

针对时间序列相似性数据挖掘所面临的任意长度时间序列数据的有效挖掘和随机波动性较大的时间序列数据的两个关键难题,提出了一种基于灰色马尔可夫SCGM(1,1)模型的时间序列数据相似性挖掘算法。采用灰色SCGM(1,1)模型从时间序列数据本身中寻找可用信息,研究总体变化趋势。用马尔可夫链来揭示随机波动规律,用熵来度量时间序列的相似度。从而扩展了相似度挖掘在时间序列数据中的适用范围,提高了数据挖掘的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Algorithm of Similarity Mining in Time Series Data on the Basis of Grey Markov Scgm(1,1) Model
Aiming at two pivotal difficulties involved by similarity data mining in time series, namely effective mining of time series data with arbitrary length and that have biggish stochastic volatility, an algorithm of similarity mining in time series data on the basis of grey Markov SCGM (1, 1) model is proposed in this paper. Grey SCGM(1, 1) model is applied to seek for available information from time series data themselves, and then general change trend has been researched. Markov chain is applied to reveal stochastic volatility regularity and entropy is applied to measure similarity degree of time series. So applicable data scope of similarity mining in time series data is extended and efficiency of data mining is improved.
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