A Single Index Approach for Subsequence Matching that Supports Normalization Transform in Time-Series Databases 


Vol. 13,  No. 4, pp. 513-524, Aug.  2006
10.3745/KIPSTD.2006.13.4.513


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  Abstract

Normalization transform is very useful for finding the overall trend of the time-series data since it enables finding sequences with similar fluctuation patterns. The previous subsequence matching method with normalization transform, however, would incur index overhead both in storage space and in update maintenance since it should build multiple indexes for supporting arbitrary length of query sequences. To solve this problem, we propose a single index approach for the normalization transformed subsequence matching that supports arbitrary length of query sequences. For the single index approach, we first provide the notion of inclusion-normalization transform by generalizing the original definition of normalization transform. The inclusion-normalization transform normalizes a window by using the mean and the standard deviation of a subsequence that includes the window. Next, we formally prove correctness of the proposed method that uses the inclusion-normalization transform for the normalization transformed subsequence matching. We then propose subsequence matching and index building algorithms to implement the proposed method. Experimental results for real stock data show that our method improves performance by up to 2.5~2.8 times over the previous method. Our approach has an additional advantage of being generalized to support many sorts of other transforms as well as normalization transform. Therefore, we believe our work will be widely used in many sorts of transform-based subsequence matching methods.

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  Cite this article

[IEEE Style]

Y. S. Moon, J. H. Kim, W. K. Loh, "A Single Index Approach for Subsequence Matching that Supports Normalization Transform in Time-Series Databases," The KIPS Transactions:PartD, vol. 13, no. 4, pp. 513-524, 2006. DOI: 10.3745/KIPSTD.2006.13.4.513.

[ACM Style]

Yang Sae Moon, Jin Ho Kim, and Woong Kee Loh. 2006. A Single Index Approach for Subsequence Matching that Supports Normalization Transform in Time-Series Databases. The KIPS Transactions:PartD, 13, 4, (2006), 513-524. DOI: 10.3745/KIPSTD.2006.13.4.513.