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Sum-Max Monotonic Ranked Joins for Evaluating Top-K Twig Queries on Weighted Data Graphs

机译:SUM-MAX单调排名加入用于评估加权数据图上的TOP-K TWIG查询

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In many applications, the underlying data (the web, an XML document, or a relational database) can be seen as a graph. These graphs may be enriched with weights, associated with the nodes and edges of the graph, denoting application specific desirability/penalty assessments, such as popularity, trust, or cost. A particular challenge when considering such weights in query processing is that results need to be ranked accordingly. Answering keyword-based queries on weighted graphs is shown to be computationally expensive. In this paper, we first show that answering queries with further structure imposed on them remains NP-hard. We next show that, while the query evaluation task can be viewed in terms of ranked structural-joins along query axes, the monotonicity property, necessary for ranked join algorithms, is violated. Consequently, traditional ranked join algorithms are not directly applicable. Thus, we establish an alternative, sum-max monotonicity property and show how to leverage this for developing a self-punctuating, horizon-based ranked join (HR-Join) operator for ranked twig-query execution on data graphs. We experimentally show the effectiveness of the proposed evaluation schemes and the HR-join operator for merging ranked sub-results under sum-max monotonicity.
机译:在许多应用中,可以将底层数据(Web,XML文档或关系数据库)视为图形。这些图可以富有重量,与​​图的节点和边缘相关联,表示应用特定的期望/惩罚评估,例如人气,信任或成本。考虑查询处理中的这种权重时的特定挑战是,结果需要相应地排序。在加权图上回答基于关键字的查询被显示为计算昂贵。在本文中,我们首先表明回答了对它们施加的进一步结构的查询仍然存在NP-HARD。接下来,我们显示,虽然可以以查询轴的排序结构连接的Quicalulation-opins查看查询评估任务,但违反了排名加入算法所需的单调性属性。因此,传统的排名加入算法不可直接适用。因此,我们建立了替代,SUM-MOMOTONOTINGITY属性,并展示如何利用这一点,以便开发用于在数据图表上排名的曲线查询执行的自拍方式,基于地平线的排名加入(HR-Join)运算符。我们通过实验展示了所提出的评估计划和HR-Join运营商的有效性,用于在SUM-MAX单调性下合并排名的子结果。

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