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Using triangle inequality to efficiently process continuous queries on high-dimensional streaming time series

机译:使用三角不等式有效处理高维流时间序列上的连续查询

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摘要

In many applications, it is important to quickly find, from a database of patterns, the nearest neighbors of high-dimensional query points that come into the system in a streaming form. Treating each query point as a separate one is inefficient. Consecutive query points are often neighbors in the high-dimensional space, and intermediate results in the processing of one query should help the processing of the next. This paper extends the KD tree with triangle inequality to deal with high-dimensional streaming time series. More specifically, the distances calculated for earlier query points (to patterns) are used to filter out patterns that are not possible to be the nearest neighbor of the current one. Experiments show that this extension works well.
机译:在许多应用程序中,重要的是要从模式数据库中快速找到以流形式进入系统的高维查询点的最近邻居。将每个查询点视为一个单独的查询点效率很低。连续查询点通常是高维空间中的邻居,处理一个查询的中间结果应有助于处理下一个查询。本文扩展了三角不等式的KD树,以处理高维流时间序列。更具体地说,为较早的查询点(到模式)计算的距离用于过滤掉不可能成为当前模式的最近邻居的模式。实验表明,此扩展程序很好用。

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