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Progressive Ranking of Range Aggregates

机译:范围汇总的渐进排名

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摘要

Ranking-aware queries have been gaining much attention recently in many applications such as search engines and data streams. They are, however, not only restricted to such applications but are also very useful in OLAP applications. In this paper, we introduce aggregation ranking queries in OLAP data cubes motivated by an online advertisement tracking data warehouse application. These queries aggregate information over a specified range and then return the ranked order of the aggregated values. They differ from range aggregate queries in that range aggregate queries are mainly concerned with an aggregate operator such as SUM and MIN/MAX over the selected ranges of all dimensions in the data cubes. Existing techniques for range aggregate queries are not able to process aggregation ranking queries efficiently. Hence, in this paper we propose new algorithms to handle this problem. The essence of the proposed algorithms is based on both ranking and cumulative information to progressively rank aggregation results. Furthermore we empirically evaluate our techniques and the experimental results show that the query cost is improved significantly.
机译:最近在许多应用程序(如搜索引擎和数据流)等应用中,排名感知的查询已经获得了很多关注。然而,它们不仅限于此类应用,而且在OLAP应用中也非常有用。在本文中,我们在由在线广告跟踪数据仓库应用程序中引发OLAP数据多维数据集中的聚合排名查询。这些查询在指定范围内聚合信息,然后返回聚合值的排名顺序。它们与范围聚合查询不同,该范围聚合查询主要涉及聚合运算符,例如数据多维数据集中所有维度的所选范围的总和和min / max。范围聚合查询的现有技术无法有效地处理聚合排序查询。因此,在本文中,我们提出了新的算法来处理这个问题。所提出的算法的本质是基于排名和累积信息,以逐步排名汇总结果。此外,我们经验评估我们的技术,实验结果表明查询成本显着提高。

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