An Online Algorithm for Segmenting Time Series

San Jose, CA(2001)

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摘要
In recent years, there has been an explosion of interest in mining time-series databases. As with most computer science problems, representation of the data is the key to efficient and effective solutions. One of the most commonly used representations is piecewise linear approximation. This representation has been used by various researchers to support clustering, classification, indexing and association rule mining of time-series data. A variety of algorithms have been proposed to obtain this representation, with several algorithms having been independently rediscovered several times. In this paper, we undertake the first extensive review and empirical comparison of all proposed techniques. We show that all these algorithms have fatal flaws from a data-mining perspective. We introduce a novel algorithm that we empirically show to be superior to all others in the literature
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关键词
extensive review,empirical comparison,effective solution,segmenting time series,data mining perspective,computer science problem,mining time series databases,proposed technique,online algorithm,allthese algorithm,series data,association rule mining,classification,data representation,computer science,association rules,time series,databases,clustering algorithms,time series data,clustering,indexing,data mining
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