从自然语言问题到SPARQL查询:基于模式的方法

Nadine Steinmetz, Ann-Katrin Arning, K. Sattler
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引用次数: 12

摘要

关联数据知识库是有价值的知识来源,它提供见解,揭示各种关系的事实,并以结构良好的形式提供大量元数据。尽管语义信息的格式(即RDF(S))通过将每个事实表示为主题、属性和对象的三元组来保持简单,但是对知识的访问只能使用数据上的SPARQL查询。因此,问答(QA)系统提供了一种用户友好的方式来访问任何类型的知识库,特别是关联数据源,以深入了解语义信息。由于RDF(S)知识库通常以相同的方式构建,并提供有关所包含信息的语义元数据,因此我们提供了一种独立于底层知识库的新方法。因此,我们提出的方法的主要贡献是底层知识库的简单可替换性。该算法基于一般的问题和查询模式,仅访问实际查询生成和执行的知识库。本文提出了建议的方法,并与最先进的关联数据方法进行了评估,以应对QA系统的挑战。
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From Natural Language Questions to SPARQL Queries: A Pattern-based Approach
Linked Data knowledge bases are valuable sources of knowledge which give insights, reveal facts about various relationships and provide a large amount of metadata in well-structured form. Although the format of semantic information – namely as RDF(S) – is kept simple by representing each fact as a triple of subject, property and object, the access to the knowledge is only available using SPARQL queries on the data. Therefore, Question Answering (QA) systems provide a user-friendly way to access any type of knowledge base and especially for Linked Data sources to get insight into the semantic information. As RDF(S) knowledge bases are usually structured in the same way and provide per se semantic metadata about the contained information, we provide a novel approach that is independent from the underlying knowledge base. Thus, the main contribution of our proposed approach constitutes the simple replaceability of the underlying knowledge base. The algorithm is based on general question and query patterns and only accesses the knowledge base for the actual query generation and execution. This paper presents the proposed approach and an evaluation in comparison to state-of-the-art Linked Data approaches for challenges of QA systems.
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