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Robust Singular Spectrum Transform

机译:鲁棒奇异谱变换

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摘要

Change Point Discovery is a basic algorithm needed in many time series mining applications including rule discovery, motif discovery, casual analysis, etc. Several techniques for change point discovery have been suggested including wavelet analysis, cosine transforms, CUMSUM, and Singular Spectrum Transform. Of these methods Singular Spectrum Transform (SST) have received much attention because of its generality and because it does not require ad-hoc adjustment for every time series. In this paper we show that traditional SST suffers from two major problems: the need to specify five parameters and the rapid reduction in the specificity with increased noise levels. In this paper we define the Robust Singular Spectrum Transform (RSST) that alleviates both of these problems and compare it to RSST using different synthetic and real-world data series.
机译:更改点发现是许多时间级挖掘应用所需的基本算法,包括规则发现,图案发现,休闲分析等。已经提出了几种改变点发现的技术,包括小波分析,余弦变换,块和奇异谱变换。在这些方法中,奇异频谱变换(SST)由于其一般性而受到了很多关注,因为它不需要每次序列的临时调整。在本文中,我们表明,传统的SST遭受了两个主要问题:需要指定五个参数和特异性的快速减少,噪音水平增加。在本文中,我们定义了稳健的奇异频谱变换(RSST),可以减轻两个问题并使用不同的合成和现实世界数据系列将其与RSST进行比较。

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