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首页> 外文期刊>International Journal of Business Intelligence and Data Mining >Similarity search in streaming time series with the support of Skyline index
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Similarity search in streaming time series with the support of Skyline index

机译:借助Skyline索引在流式时间序列中进行相似度搜索

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摘要

The similarity search problem in streaming time series has become an interesting research topic because such data arise in so many applications of various areas. In this problem, the fact that data streams are updated continuously as new data arrive in real time is a challenge because of dimensionality reduction recalculation and index update costs. In this paper, using ideas of a delayed update policy on R~*-tree proposed by Kontaki et al., we proposed an improved method in which indexable piecewise linear approximation (PLA) dimensionality reduction method with the support of Skyline index can be used to perform effectively the similarity search task in streaming time series. Experimental results show that the similarity search in streaming time series with the support of Skyline index is more efficient than the case of using R~*-tree.
机译:流时间序列中的相似性搜索问题已成为一个有趣的研究主题,因为此类数据出现在各个领域的许多应用中。在此问题中,由于降维重新计算和索引更新成本,随着新数据实时到达,数据流会不断更新这一事实是一个挑战。本文利用Kontaki等人提出的R〜*树上的延迟更新策略的思想,提出了一种改进的方法,其中可以使用基于Skyline索引的可索引分段线性近似(PLA)降维方法在流时间序列中有效执行相似度搜索任务。实验结果表明,在支持Skyline索引的流时间序列中进行相似度搜索比使用R〜* -tree更为有效。

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