Keyword Search in Spatial Databases: Towards Searching by Document

This work addresses a novel spatial keyword query called the m-closest keywords (mCK) query. Given a database of spatial objects, each tuple is associated with some descriptive information represented in the form of keywords. The mCK query aims to find the spatially closest tuples which match m user...

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Bibliographic Details
Published in2009 IEEE 25th International Conference on Data Engineering pp. 688 - 699
Main Authors Dongxiang Zhang, Yeow Meng Chee, Mondal, A., Tung, A., Kitsuregawa, M.
Format Conference Proceeding
LanguageEnglish
Japanese
Published IEEE 01.03.2009
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ISBN9781424434220
142443422X
ISSN1063-6382
DOI10.1109/ICDE.2009.77

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Summary:This work addresses a novel spatial keyword query called the m-closest keywords (mCK) query. Given a database of spatial objects, each tuple is associated with some descriptive information represented in the form of keywords. The mCK query aims to find the spatially closest tuples which match m user-specified keywords. Given a set of keywords from a document, mCK query can be very useful in geotagging the document by comparing the keywords to other geotagged documents in a database. To answer mCK queries efficiently, we introduce a new index called the bR*-tree, which is an extension of the R*-tree. Based on bR*-tree, we exploit a priori-based search strategies to effectively reduce the search space. We also propose two monotone constraints, namely the distance mutex and keyword mutex, as our a priori properties to facilitate effective pruning. Our performance study demonstrates that our search strategy is indeed efficient in reducing query response time and demonstrates remarkable scalability in terms of the number of query keywords which is essential for our main application of searching by document.
ISBN:9781424434220
142443422X
ISSN:1063-6382
DOI:10.1109/ICDE.2009.77