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ELCA evaluation for keyword search on probabilistic XML data

journal contribution
posted on 2013-03-01, 00:00 authored by Rui Zhou, Chengfei Liu, Jianxin LiJianxin Li, Jeffrey Xu Yu
As probabilistic data management is becoming one of the main research focuses and keyword search is turning into a more popular query means, it is natural to think how to support keyword queries on probabilistic XML data. With regards to keyword query on deterministic XML documents, ELCA (Exclusive Lowest Common Ancestor) semantics allows more relevant fragments rooted at the ELCAs to appear as results and is more popular compared with other keyword query result semantics (such as SLCAs). In this paper, we investigate how to evaluate ELCA results for keyword queries on probabilistic XML documents. After defining probabilistic ELCA semantics in terms of possible world semantics, we propose an approach to compute ELCA probabilities without generating possible worlds. Then we develop an efficient stack-based algorithm that can find all probabilistic ELCA results and their ELCA probabilities for a given keyword query on a probabilistic XML document. Finally, we experimentally evaluate the proposed ELCA algorithm and compare it with its SLCA counterpart in aspects of result probability, time and space efficiency, and scalability.

History

Journal

World wide web

Volume

16

Issue

2

Pagination

171 - 193

Publisher

Springer

Location

New York, N.Y.

ISSN

1386-145X

Language

eng

Publication classification

C1.1 Refereed article in a scholarly journal

Copyright notice

2012, Springer Science+Business Media, LLC