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COEFFICIENT CONTROL MULTI-STEP k-NN SEARCH IN TIME-SERIES DATABASES

机译:时序数据库中的系数控制多步k-NN搜索

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The k-NN search is widely used for similarity search on various time-series data such as image, text, trajectory, and biomedical data. In this paper, we address the problem of improving the performance of multi-step k-NN search on a multidimensional index. The existing multi-step k-NN search has a critical performance problem: it produces a large tolerance from a k-NN query on the index due to use of dimensionality reduction, and the large tolerance incurs a large number of candidates, which lead to severe I/O and CPU overhead. To overcome this problem, we propose a new solution, called coefficient control multi-step k-NN search (cc-kNN search in short), which uses c · k instead of k in a k-NN query to obtain a tight tolerance. For this, we intuitively explain why a simple operation of increasing k can produce the tight tolerance and formally prove that the cc-kNN search finds k results correctly without any false dismissal. We also define the control constant c used in the k-NN query and formally present how to construct an estimation function for determining the constant c. Experimental results show that the proposed cc-kNN search beats the existing multi-step k-NN search in the execution time as well as the number of candidates.
机译:k-NN搜索被广泛用于对各种时间序列数据(例如图像,文本,轨迹和生物医学数据)进行相似性搜索。在本文中,我们解决了在多维索引上提高多步k-NN搜索性能的问题。现有的多步k-NN搜索存在一个关键的性能问题:由于使用降维,它会通过对索引的k-NN查询产生较大的容差,并且较大的容差会导致大量候选项,从而导致严重的I / O和CPU开销。为了克服这个问题,我们提出了一种新的解决方案,称为系数控制多步k-NN搜索(简称cc-kNN搜索),它在k-NN查询中使用c·k而不是k来获得严格的容差。为此,我们直观地解释了为什么简单地增加k即可产生严格的公差,并正式证明cc-kNN搜索正确找到k个结果而没有任何错误的解雇。我们还定义了在k-NN查询中使用的控制常数c,并正式介绍了如何构建用于确定常数c的估计函数。实验结果表明,提出的cc-kNN搜索在执行时间和候选数量上都优于现有的多步k-NN搜索。

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