Continuous ranking on uncertain streams

Research output: Contribution to journalArticlepeer-review

3 Scopus citations

Abstract

Data uncertainty widely exists in many web applications, financial applications and sensor networks. Ranking queries that return a number of tuples with maximal ranking scores are important in the field of database management. Most existing work focuses on proposing static solutions for various ranking semantics over uncertain data. Our focus is to handle continuous ranking queries on uncertain data streams: testing each new tuple to output highly-ranked tuples. The main challenge comes from not only the fact that the possible world space will grow exponentially when new tuples arrive, but also the requirement for low space- and time-complexity to adapt to the streaming environments. This paper aims at handling continuous ranking queries on uncertain data streams. We first study how to handle this issue exactly, then we propose a novel method (exponential sampling) to estimate the expected rank of a tuple with high quality. Analysis in theory and detailed experimental reports evaluate the proposed methods.

Original languageEnglish
Pages (from-to)686-699
Number of pages14
JournalFrontiers of Computer Science in China
Volume6
Issue number6
DOIs
StatePublished - Dec 2012

Keywords

  • continuous ranking query
  • possible world semantics
  • sampling
  • uncertain data stream

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