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Prefix-querying

机译:前缀查询

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This paper discusses an index-based subsequence matching that supports time warping in large sequence databases. Time warping enables finding sequences with similar patterns even when they are of different lengths. In our earlier work, we suggested an efficient method for whole matching under time warping. This method constructs a multi-dimensional index on a set of feature vectors, which are invariant to time warping, from data sequences. For filtering at feature space, it also applies a lower-bound function, which consistently underestimates the time warping distance as well as satisfies the triangular inequality.In this paper, we incorporate the prefix-querying approach based on sliding windows into the earlier approach. For indexing, we extract a feature vector from every subsequence inside a sliding window and construct a multi-dimensional index using a feature vector as indexing attributes. For query processing, we perform a series of index searches using the feature vectors of qualifying query prefixes. Our approach provides effective and scalable subsequence matching even with a large volume of a database. We also prove that our approach does not incur false dismissal. To verify the superiority of our method, we perform extensive experiments. The results reveal that our method achieves significant speedup with real-world S&P 500 stock data and with very large synthetic data.
机译:本文讨论了基于索引的子序列匹配,该匹配支持大型序列数据库中的时间扭曲。通过时间扭曲,即使长度不同,也可以查找具有相似模式的序列。在我们早期的工作中,我们提出了一种在时间扭曲下进行 Whole 匹配的有效方法。该方法在一组特征向量上构造一个多维索引,这些特征向量根据数据序列对时间扭曲是不变的。为了在特征空间上进行过滤,它还应用了一个下界函数,该函数始终低估了时间扭曲距离并满足三角不等式。将窗口滑动到较早的方法中。对于索引,我们从滑动窗口内的每个子序列中提取特征向量,并使用特征向量作为索引属性来构建多维索引。对于查询处理,我们使用 qualifying 查询前缀的特征向量执行一系列索引搜索。即使在数据库量很大的情况下,我们的方法也可以提供有效且可扩展的子序列匹配。我们还证明了我们的方法不会导致错误的解雇。为了验证我们方法的优越性,我们进行了广泛的实验。结果表明,我们的方法利用真实的S&P 500股票数据和非常大的综合数据实现了显着的加速。

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