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Keyword Search in Spatial Databases: Towards Searching by Document

机译:空间数据库中的关键字搜索:按文档搜索

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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.
机译:这项工作解决了一种新颖的空间关键字查询,称为m-最近关键字(mCK)查询。给定一个空间对象数据库,每个元组都与一些以关键字形式表示的描述性信息相关联。 mCK查询旨在查找与m个用户指定的关键字匹配的空间上最接近的元组。给定文档中的一组关键字,通过将关键字与数据库中其他经过地理标记的文档进行比较,mCK查询在对文档进行地理标记中非常有用。为了有效地回答mCK查询,我们引入了一个新的索引,称为bR * -tree,它是R * -tree的扩展。基于bR *树,我们利用基于先验的搜索策略来有效地减少搜索空间。我们还提出了两个单调约束,即距离互斥量和关键字互斥量,作为促进有效修剪的先验属性。我们的性能研究表明,我们的搜索策略在减少查询响应时间方面确实有效,并且在查询关键词的数量方面具有显着的可扩展性,这对于我们按文档搜索的主要应用至关重要。

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