Queries with Arithmetic on Incomplete Databases

Marco Console, M. Hofer, L. Libkin
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引用次数: 6

Abstract

The standard notion of query answering over incomplete database is that of certain answers, guaranteeing correctness regardless of how incomplete data is interpreted. In majority of real-life databases, relations have numerical columns and queries use arithmetic and comparisons. Even though the notion of certain answers still applies, we explain that it becomes much more problematic in situations when missing data occurs in numerical columns. We propose a new general framework that allows us to assign a measure of certainty to query answers. We test it in the agnostic scenario where we do not have prior information about values of numerical attributes, similarly to the predominant approach in handling incomplete data which assumes that each null can be interpreted as an arbitrary value of the domain. The key technical challenge is the lack of a uniform distribution over the entire domain of numerical attributes, such as real numbers. We overcome this by associating the measure of certainty with the asymptotic behavior of volumes of some subsets of the Euclidean space. We show that this measure is well-defined, and describe approaches to computing and approximating it. While it can be computationally hard, or result in an irrational number, even for simple constraints, we produce polynomial-time randomized approximation schemes with multiplicative guarantees for conjunctive queries, and with additive guarantees for arbitrary first-order queries. We also describe a set of experimental results to confirm the feasibility of this approach.
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不完全数据库上的算术查询
不完整数据库上的查询回答的标准概念是某些答案,无论如何解释不完整的数据都保证正确性。在大多数实际数据库中,关系具有数值列,查询使用算术和比较。尽管某些答案的概念仍然适用,但我们解释说,在数字列中出现丢失数据的情况下,它会变得更成问题。我们提出了一个新的通用框架,允许我们为查询答案分配一个确定性的度量。我们在不可知的场景中测试它,我们没有关于数值属性值的先验信息,类似于处理不完整数据的主要方法,该方法假设每个null可以被解释为域的任意值。关键的技术挑战是在整个数值属性领域(如实数)缺乏统一的分布。我们通过将确定性测度与欧几里德空间的某些子集的体积的渐近行为联系起来来克服这个问题。我们证明了这个度量是定义良好的,并描述了计算和近似它的方法。虽然它在计算上很困难,或者即使对于简单的约束也会导致无理数,但我们生成了多项式时间的随机近似方案,对合取查询具有乘法保证,对任意一阶查询具有加性保证。我们还描述了一组实验结果来证实该方法的可行性。
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