Advanced Search
CS Search Google Search
Subscribers, please login

Published Articles >> Table of Contents >> Abstract

21st International Conference on Data Engineering (ICDE'05)   pp. 680-691
Venn Sampling: A Novel Prediction Technique for Moving Objects

Full Article Text: Download PDF of full textBuy this articleGet full text from IEEE Xplore

DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/ICDE.2005.151
Send link to a friend

Abstract

Given a region q_R and a future timestamp q_T, a "range aggregate" query estimates the number of objects expected to appear in q_R at time q_T. Currently the only methods for processing such queries are based on spatio-temporal histograms, which have several serious problems. First, they consume considerable space in order to provide accurate estimation. Second, they incur high evaluation cost. Third, their efficiency continuously deteriorates with time. Fourth, their maintenance requires significant update overhead.

Motivated by this, we develop Venn sampling (VS), a novel estimation method optimized for a set of "pivot queries" that reflect the distribution of actual ones. In particular, given m pivot queries, VS achieves perfect estimation with only O(m) samples, as opposed to O(2^m) required by the current state of the art in workload-aware sampling. Compared with histograms, our technique is much more accurate (given the same space), produces estimates with negligible cost, and does not deteriorate with time. Furthermore, it permits the development of a novel "query-driven" update policy, which reduces the update cost of conventional policies significantly.

Additional Information

Citation:  Yufei Tao, Dimitris Papadias, Jian Zhai, Qing Li, "Venn Sampling: A Novel Prediction Technique for Moving Objects," icde, pp. 680-691,  21st International Conference on Data Engineering (ICDE'05),  2005

Similar Articles

Abstract Contents
Abstract
Citation




Free access to

  • Abstracts
  • Selected PDFs

Electronic subscribers login to:

  • Access HTML/PDFs of full text articles

Subscription information

Get a Web account

PDFs require Adobe Acrobat Reader.

Peer Review Notice

Give us Feedback