Towards ontology-based OLAP: datalog-based reasoning over multidimensional ontologies

B. Neumayr, Stefan Anderlik, M. Schrefl
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引用次数: 24

Abstract

Understandability, reuse, and maintainability of analytical queries belong to the key challenges of Data Warehousing, especially in settings where a large number of business analysts work together and need to share knowledge. To tackle these challenges we propose Ontology-based OLAP where an ontology acts as superimposed conceptual layer between business analysts and multidimensional data. In Ontology-based OLAP, dimensions and facts are enriched by concept definitions capturing the semantics of relevant business terms used to define measures and to formulate analytical queries. Using traditional ontology languages, it is, however, very difficult to capture the hierarchical and multidimensional conceptualizations of business analysts. In this paper, we propose hierarchical and multidimensional ontologies to better capture these structural specificities. We define and implement the abstract structure and semantics of multidimensional ontologies as rules and constraints in Datalog with negation and represent multidimensional ontologies as Datalog facts. In addition to reasoning over multidimensional ontologies (open-world) we discuss their grounding in Data Warehouses (closed-world) as the fundament of Ontology-based OLAP.
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迈向基于本体的OLAP:多维本体上基于数据的推理
分析查询的可理解性、可重用性和可维护性属于数据仓库的主要挑战,特别是在大量业务分析人员一起工作并需要共享知识的环境中。为了应对这些挑战,我们提出了基于本体的OLAP,其中本体充当业务分析人员和多维数据之间的叠加概念层。在基于本体的OLAP中,维度和事实通过捕获用于定义度量和制定分析查询的相关业务术语的语义的概念定义得到丰富。然而,使用传统的本体语言,很难捕获业务分析人员的分层和多维概念化。在本文中,我们提出了层次和多维本体来更好地捕获这些结构特异性。我们将多维本体的抽象结构和语义定义和实现为具有否定性的Datalog中的规则和约束,并将多维本体表示为Datalog事实。除了对多维本体(开放世界)进行推理之外,我们还讨论了它们在数据仓库(封闭世界)中的基础,作为基于本体的OLAP的基础。
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