題名: Effective Filtering for Nearest-Neighbors Queries in Large Time-Series Databases
作者: Sheu, Simon
Shen, Jinxiong
關鍵字: Dynamic time warping
L2 distance
indexing
filtering
subsequence matching
期刊名/會議名稱: 中華民國92年全國計算機會議
摘要: Time-series data are periodic recordings of time-varying information. Since the data are temporal in nature, finding a similar data sequence in time-series databases to a given query is very costly. The straight forward strategy to examine each possible occurrence by sliding a window over each database sequence will take quadratic computation cost. For large time-series databases, this approach is practically infeasible. To shorten query response time, we propose in this paper a low-cost filtering mechanism to sieve out the most similar candidates from the dissimilar ones in the database. Then, only small portions of database require the true similarity measurement to finalize the query. As a result,our preprocessing approach achieves significant savings in overall query processing. We show our filtering technique incur no false dismissals, and has greater pruning power than the other competing schemes. Empirical results indicate 57% of non-similar data can be filtered out without resorting to the expensive true similarity measurement.
日期: 2006-05-26T08:00:50Z
分類:2003年 NCS 全國計算機會議

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