Answer Aggregation for Keyword Search over Relational Databases

Utharn Buranasaksee, Kriengkrai Porkaew, Umaporn Supasitthimethee
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引用次数: 2

Abstract

with the amount of text data stored in relational databases growing rapidly, the need of the user to search such information is dramatically going up. Many existing approaches focus on finding a tuple matching a keyword query and return the result as a joining network of tuples of one or more tables. In this paper, we formulate an answer aggregation of keyword search over relational databases problem which merges related joining tuples from multiple tables to a single tuple to reduce redundancy in the results and improve the search quality. We developed an approach which exploits the tuple identity information for merging tuples rather than scanning throughout the results to find the common values. We further proposed a pruning algorithm which greatly reduces the number of redundant results after merging. We have conducted experiments extensively on two well-known databases (DBLP and IMDB). The experimental results show that the number of tuples in the results was dramatically reduced which noticeably improved the search quality while the merging time and the pruning time were relatively low when compared to the searching time.
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关系型数据库关键字搜索的答案聚合
随着存储在关系数据库中的文本数据量的快速增长,用户搜索此类信息的需求急剧增加。许多现有的方法侧重于查找与关键字查询匹配的元组,并将结果作为一个或多个表的元组的连接网络返回。本文提出了一种关系数据库关键字搜索的答案聚合方法,该方法将多个表中的相关连接元组合并为一个元组,以减少结果冗余,提高搜索质量。我们开发了一种方法,利用元组标识信息来合并元组,而不是扫描整个结果来寻找公共值。我们进一步提出了一种剪枝算法,大大减少了合并后冗余结果的数量。我们在两个知名的数据库(DBLP和IMDB)上进行了广泛的实验。实验结果表明,结果中元组的数量显著减少,显著提高了搜索质量,而合并时间和剪枝时间相对于搜索时间相对较低。
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