Repairing inconsistent knowledge bases is a task that has been assessed, with great advances over several decades, from within the knowledge representation and reasoning and the database theory communities. As information becomes more complex and interconnected, new types of repositories, representation languages and semantics are developed in order to be able to query and reason about it. Graph databases provide an effective way to represent relationships among data, and allow processing and querying these connections efficiently. In this work, we focus on the problem of computing preferred (subset and superset) repairs for graph databases with data values, using a notion of consistency based on a set of Reg-GXPath expressions as integrity constraints. Specifically, we study the problem of computing preferred repairs based on two different preference criteria, one based on weights and the other based on multisets, showing that in most cases it is possible to retain the same computational complexity as in the case where no preference criterion is available for exploitation.
翻译:修复不一致的知识库是知识表示和推理以及数据库理论社区几十年来评估过的任务,在信息变得更加复杂和相互关联的情况下,开发了新类型的存储库、表示语言和语义以便能够查询和推理。图形数据库提供了一种有效的方法来表示数据之间的关系,并允许高效地处理和查询这些连接。在这项工作中,我们针对带有数据值的图形数据库计算基于一组Reg-GXPath表达式作为完整性约束的一致性概念的首选(子集和超集)修复问题。具体地,我们研究了基于两个不同偏好标准的首选修复计算问题,一个基于权重,另一个基于多重集,显示在大多数情况下,可以保留与没有可供利用的偏好标准的情况相同的计算复杂度。