A hybrid important points identification for time series: Financial case

Software Engineering and Data Mining(2010)

引用 23|浏览10
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摘要
Important points identification is the key of the piecewise linear segmentation for time series. However, nearly all existing approaches are always perceptually important points (PIPs) focused while neglecting the domain related important points (DIPs) which might be of great interests to the domain experts. In order to preserve more important information relating to the particular domain after segmentation, a hybrid method to identify important points from both perceptual and domain perspectives is presented. We show the validity and effectiveness of the proposed method via a financial case.
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关键词
data mining,financial data processing,time series,dip,pip,domain related important points,financial case,hybrid important points identification,perceptually important points,piecewise linear segmentation,domain important points,fitting effect,databases,time series analysis,piecewise linear,fitting,feedback,multidimensional systems,computer science,electronics packaging,fluctuations
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