Accelerating Similarity Search for Elastic Measures: A Study and New Generalization of Lower Bounding Distances

Author:

Paparrizos John1,Wu Kaize2,Elmore Aaron2,Faloutsos Christos3,Franklin Michael J.2

Affiliation:

1. The Ohio State University

2. University of Chicago

3. Carnegie Mellon University

Abstract

Similarity search is a core analytical task, and its performance critically depends on the choice of distance measure. For time-series querying, elastic measures achieve state-of-the-art accuracy but are computationally expensive. Thus, fast lower bounding (LB) measures prune unnecessary comparisons with elastic distances to accelerate similarity search. Despite decades of attention, there has never been a study to assess the progress in this area. In addition, the research has disproportionately focused on one popular elastic measure, while other accurate measures have received little or no attention. Therefore, there is merit in developing a framework to accumulate knowledge from previously developed LBs and eliminate the notoriously challenging task of designing separate LBs for each elastic measure. In this paper, we perform the first comprehensive study of 11 LBs spanning 5 elastic measures using 128 datasets. We identify four properties that constitute the effectiveness of LBs and propose the Generalized Lower Bounding (GLB) framework to satisfy all desirable properties. GLB creates cache-friendly summaries, adaptively exploits summaries of both query and target time series, and captures boundary distances in an unsupervised manner. GLB outperforms all LBs in speedup (e.g., up to 13.5× faster against the strongest LB in terms of pruning power), establishes new state-of-the-art results for the 5 elastic measures, and provides the first LBs for 2 elastic measures with no known LBs. Overall, GLB enables the effective development of LBs to facilitate fast similarity search.

Publisher

Association for Computing Machinery (ACM)

Subject

General Earth and Planetary Sciences,Water Science and Technology,Geography, Planning and Development

Reference103 articles.

1. Jonathan Alon Stan Sclaroff George Kollios and Vladimir Pavlovic. 2003. Discovering clusters in motion time-series data. In CVPR. 375--381. Jonathan Alon Stan Sclaroff George Kollios and Vladimir Pavlovic. 2003. Discovering clusters in motion time-series data. In CVPR. 375--381.

2. George Amvrosiadis Ali R Butt Vasily Tarasov Erez Zadok Ming Zhao Irfan Ahmad Remzi H Arpaci-Dusseau Feng Chen Yiran Chen Yong Chen etal 2018. Data Storage Research Vision 2025: Report on NSF Visioning Workshop held May 30--June 1 2018. (2018). George Amvrosiadis Ali R Butt Vasily Tarasov Erez Zadok Ming Zhao Irfan Ahmad Remzi H Arpaci-Dusseau Feng Chen Yiran Chen Yong Chen et al. 2018. Data Storage Research Vision 2025: Report on NSF Visioning Workshop held May 30--June 1 2018. (2018).

3. Johannes Aßfalg , Hans-Peter Kriegel , Peer Kröger , Peter Kunath , Alexey Pryakhin , and Matthias Renz . 2006 . Similarity search on time series based on threshold queries . In International Conference on Extending Database Technology. Springer, 276--294 . Johannes Aßfalg, Hans-Peter Kriegel, Peer Kröger, Peter Kunath, Alexey Pryakhin, and Matthias Renz. 2006. Similarity search on time series based on threshold queries. In International Conference on Extending Database Technology. Springer, 276--294.

4. The great time series classification bake off: a review and experimental evaluation of recent algorithmic advances;Bagnall Anthony;Data Mining and Knowledge Discovery,2017

5. Anthony J Bagnall and Gareth J Janacek. 2004. Clustering time series from ARMA models with clipped data. In KDD. 49--58. Anthony J Bagnall and Gareth J Janacek. 2004. Clustering time series from ARMA models with clipped data. In KDD. 49--58.

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