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Optimizing MPF Queries: Decision Support and Probabilistic Inference

机译:优化MPF查询:决策支持和概率推理

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Managing uncertain data using probabilistic frameworks has attracted much interest lately in the database literature, and a central computational challenge is probabilistic inference. This paper presents a broad class of aggregate queries, called MPF queries, inspired by the literature on probabilistic inference in statistics and machine learning. An MPF (Marginalize a P arginalize Product F roduct Function) query is an aggregate query over a stylized join of several relations. In probabilistic inference, this join corresponds to taking the product of several probability distributions, while the aggregate operation corresponds to marginalization. Probabilistic inference can be expressed directly as MPF queries in a relational setting, and therefore, by optimizing evaluation of MPF queries, we provide scalable support for probabilistic inference in database systems. To optimize MPF queries, we build on ideas from database query optimization as well as traditional algorithms such as Variable Elimination and Belief Propagation from the probabilistic inference literature. Although our main motivation for introducing MPF queries is to support easy expression and efficient evaluation of probabilistic inference in a DBMS, we observe that this class of queries is very useful for a range of decision support tasks. We present and optimize MPF queries in a general form where arbitrary functions (I.e., other than probability distributions) are handled, and demonstrate their value for decision support applications through a number of illustrative and natural examples.
机译:使用概率框架管理不确定数据最近在数据库文献中引起了人们的极大兴趣,并且一个主要的计算挑战是概率推论。本文介绍了一大类汇总查询,称为MPF查询,其灵感来自有关统计和机器学习中概率推断的文献。 MPF(边际化最终产品生产功能)查询是对多个关系的程式化联接的综合查询。在概率推论中,该联接对应于取几个概率分布的乘积,而合计操作对应于边际化。概率推断可以在关系设置中直接表示为MPF查询,因此,通过优化MPF查询的评估,我们为数据库系统中的概率推断提供了可扩展的支持。为了优化MPF查询,我们基于数据库查询优化的思想以及概率推理文献中的传统算法(例如,消除变量和置信度传播)。尽管我们引入MPF查询的主要动机是为了支持DBMS中的简单表达和概率推断的有效评估,但我们观察到此类查询对于一系列决策支持任务非常有用。我们以处理任意函数(即概率分布以外的函数)的一般形式来展示和优化MPF查询,并通过许多说明性和自然示例展示其对决策支持应用程序的价值。

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