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Most Probable Explanations for Probabilistic Database Queries

机译:最可能对概率数据库查询的解释

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Forming the foundations of large-scale knowledge bases, probabilistic databases have been widely studied in the literature. In particular, probabilistic query evaluation has been investigated intensively as a central inference mechanism. However, despite its power, query evaluation alone cannot extract all the relevant information encompassed in large-scale knowledge bases. To exploit this potential, we study two inference tasks; namely finding the most probable database and the most probable hypothesis for a given query. As natural counterparts of most probable explanations (MPE) and maximum a posteriori hypotheses (MAP) in probabilistic graphical models, they can be used in a variety of applications that involve prediction or diagnosis tasks. We investigate these problems relative to a variety of query languages, ranging from conjunctive queries to ontology-mediated queries, and provide a detailed complexity analysis.
机译:形成大规模知识库的基础,在文献中已被广泛研究了概率数据库。特别地,已经将概率查询评估作为中央推理机制进行了密集地研究。但是,尽管它的权力,单独的查询评估无法提取大规模知识库中包含的所有相关信息。利用这种潜力,我们研究了两项推理任务;即找到最可能的数据库和给定查询的最可能的假设。作为最可能的解释(MPE)的自然对应物(MPE)和概率图形模型中最大的后验假设(MAP),它们可以用于涉及预测或诊断任务的各种应用中。我们研究了这些问题相对于各种查询语言,从对本体介入查询的联合查询范围,并提供详细的复杂性分析。

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