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Confidence-Aware Join Algorithms

机译:信心感知连接算法

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摘要

In uncertain and probabilistic databases, confidence values (or probabilities) are associated with each data item. Confidence values are assigned to query results based on combining confidences from the input data. Users may wish to apply a threshold on result confidence values, ask for the "top-$k$'' results by confidence, or obtain results sorted by confidence. Efficient algorithms for these types of queries can be devised by exploiting properties of the input data and the combining functions for result confidences. Previous algorithms for these problems assumed sufficient memory was available for processing. In this paper, we address the problem of processing all three types of queries when sufficient memory is not available, minimizing retrieval cost. We present algorithms, theoretical guarantees, and experimental evaluation.
机译:在不确定和概率数据库中,置信度值(或概率)与每个数据项相关联。基于组合输入数据的置信度,将置信度值分配给查询结果。用户可能希望对结果置信度值应用阈值,通过置信度请求“ top- $ k $”结果或获取按置信度排序的结果,可以通过利用输入的属性来设计针对此类查询的有效算法。数据和合并函数以确保结果可信度。以前针对这些问题的算法假定有足够的内存可用于处理。本文解决了在没有足够的内存时处理所有三种类型的查询的问题,从而最大程度地降低了检索成本。算法,理论保证和实验评估。

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