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An Improvement of PIP for Time Series Dimensionality Reduction and Its Index Structure

机译:提高时间序列维度减少的PIP及其指数结构

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In this paper, we introduce a new time series dimensionality reduction method, IPIP. This method takes full advantages of PIP (Perceptually Important Points) method, proposed by Chung et al., with some improvements in order that the new method can theoretically satisfy the lower bounding condition for time series dimensionality reduction methods. Furthermore, we can make IPIP index able by showing that a time series compressed by IPIP can be indexed with the support of a multidimensional index structure based on Skyline index. Our experiments show that our IPIP method with its appropriate index structure can perform better than to some previous schemes, namely PAA based on traditional R*- tree.
机译:在本文中,我们介绍了一个新的时间序列维度减少方法,iPIP。该方法采用Chung等人提出的PIP(感知的重要点)方法的完全优点。,通过一些改进,使得新方法可以理论上可以满足时间序列维度减少方法的较低限制条件。此外,我们可以通过显示通过基于天际线索引的多维索引结构来索引IPIP压缩的时间序列来进行IPIP索引。我们的实验表明,我们的IPIP方法具有适当的指标结构,可以更好地表现出一些先前的方案,即基于传统R *树的PAA。

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