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Optimization of subsequence matching under time warping in time-series databases

机译:时间序列数据库翘曲的随后匹配优化

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This paper discusses effective processing of subsequence matching under time warping in time-series databases. Time warping is a transformation that enables finding of sequences with similar patterns even when they are of different lengths. Through a preliminary experiment, we first point out that Naive-Scan, a basic method for processing of subsequence matching under time warping, has its performance bottleneck in the CPU processing step. For optimizing this step, in this paper, we propose a novel method that eliminates all possible redundant calculations. It is verified that this method is not only an optimal one for processing Naive-Scan, but also does not incur any false dismissals. Our experimental results showed that the proposed method can make great improvement in performance of subsequence matching under time warping. Especially, Naive-Scan, which has been known to show the worst performance, performs much better than LB-Scan as well as ST-Filter in all the cases by employing the proposedmethod for CPU processing. This result is interesting and valuable in that the performance inversion among Naive-Scan, LB-Scan, and ST-Filter has occurred by optimizing the CPU processing step, which is their common performance bottleneck.
机译:本文讨论了随着时间序列数据库翘曲的随后匹配的有效处理。时间翘曲是一种转换,即使当它们具有不同的长度,也能够找到具有类似模式的序列。通过初步实验,我们首先指出了天真扫描,一种用于处理随后翘曲的子匹配的基本方法,在CPU处理步骤中具有其性能瓶颈。为了优化这一步骤,在本文中,我们提出了一种新的方法,消除了所有可能的冗余计算。验证了这种方法不仅是用于处理天真扫描的最佳选择,而且也不会产生任何虚假的解雇。我们的实验结果表明,该方法可以大大提高随后扭曲的随后匹配的性能。特别是,已经熟悉的天真扫描,这是展示最糟糕的性能,在所有情况下,通过采用CPU处理的预设方法在所有情况下表现得比LB-Scan以及ST过滤器更好。这一结果是有趣的,有价值的是,通过优化CPU处理步骤,发生了天真扫描,LB-Scan和ST过滤器的性能反转,这是它们的常见性能瓶颈。

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