Efficient Approximation of Certain and Possible Answers for Ranking and Window Queries over Uncertain Data (Extended version)

Su Feng, Boris Glavic, Oliver Kennedy
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Abstract

Uncertainty arises naturally in many application domains due to, e.g., data entry errors and ambiguity in data cleaning. Prior work in incomplete and probabilistic databases has investigated the semantics and efficient evaluation of ranking and top-k queries over uncertain data. However, most approaches deal with top-k and ranking in isolation and do represent uncertain input data and query results using separate, incompatible data models. We present an efficient approach for under- and over-approximating results of ranking, top-k, and window queries over uncertain data. Our approach integrates well with existing techniques for querying uncertain data, is efficient, and is to the best of our knowledge the first to support windowed aggregation. We design algorithms for physical operators for uncertain sorting and windowed aggregation, and implement them in PostgreSQL. We evaluated our approach on synthetic and real world datasets, demonstrating that it outperforms all competitors, and often produces more accurate results.
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不确定数据上排序和窗口查询的确定和可能答案的有效逼近(扩展版)
由于数据输入错误和数据清理中的模糊性,在许多应用领域中自然会出现不确定性。先前在不完整和概率数据库中的工作已经研究了不确定数据上排名和top-k查询的语义和有效评估。但是,大多数方法孤立地处理top-k和排名,并且确实使用单独的、不兼容的数据模型表示不确定的输入数据和查询结果。我们提出了一种有效的方法来对不确定数据的排名、top-k和窗口查询的结果进行过近似和过近似。我们的方法与查询不确定数据的现有技术很好地集成在一起,效率很高,并且据我们所知,是第一个支持窗口聚合的方法。设计了不确定排序和窗口聚合的物理运算符算法,并在PostgreSQL中实现。我们在合成和真实世界的数据集上评估了我们的方法,证明它优于所有竞争对手,并且通常产生更准确的结果。
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