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Top-k Differential Queries in Graph Databases

机译:图形数据库中的Top-K差异查询

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The sheer volume as well as the schema complexity of today's graph databases impede the users in formulating queries against these databases and often cause queries to "fail" by delivering empty answers. To support users in such situations, the concept of differential queries can be used to bridge the gap between an unexpected result (e.g. an empty result set) and the query intention of users. These queries deliver missing parts of a query graph and, therefore, work with such scenarios that require users to specify a query graph. Based on the discovered information about a missing query subgraph, users may understand which vertices and edges are the reasons for queries that unexpectedly return empty answers, and thus can reformulate the queries if needed. A study showed that the result sets of differential queries are often too large to be manually introspected by users and thus a reduction of the number of results and their ranking is required. To address these issues, we extend the concept of differential queries and introduce top-k differential queries that calculate the ranking based on users' preferences and therefore significantly support the users' understanding of query database management systems. The idea consists of assigning relevance weights to vertices or edges of a query graph by users that steer the graph search and are used in the scoring function for top-k differential results. Along with the novel concept of the top-k differential queries, we further propose a strategy for propagating relevance weights and we model the search along the most relevant paths.
机译:纯粹的卷以及当今图形数据库的模式复杂性阻碍了用户对这些数据库的查询进行制定,并且通过提供空答案,通常会导致查询“失败”。为了在这种情况下支持用户,差异查询的概念可用于弥合意外结果(例如空结果集)与用户的查询意图之间的间隙。这些查询提供了查询图的缺失部分,因此,使用需要用户指定查询图的这种方案。基于发现有关缺失查询子图的信息,用户可能会理解哪个顶点和边缘是出乎意料地返回空答案的查询的原因,因此可以在需要时重新格式化查询。一项研究表明,差分查询的结果集往往太大而无法由用户手动检查,从而需要减少结果的数量及其排名。为了解决这些问题,我们扩展了差异查询的概念,并引入了基于用户偏好计算排名的Top-K差异查询,从而显着支持用户对查询数据库管理系统的理解。该想法包括通过转向图形搜索的用户分配相关性权重或查询图的边缘,并且用于Top-K差异结果的评分函数。随着Top-K差分查询的新颖概念,我们进一步提出了一种传播相关权重的策略,并且我们沿着最相关路径进行搜索。

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