首页> 外文会议>IEEE International Conference on Semantic Computing >You are Missing a Concept! Enhancing Ontology-Based Data Access with Evolving Ontologies
【24h】

You are Missing a Concept! Enhancing Ontology-Based Data Access with Evolving Ontologies

机译:您缺少一个概念!通过不断发展的本体来增强基于本体的数据访问

获取原文

摘要

In the last years, enterprises increase their effort to collect large amounts of data from many heterogeneous data sources and store it in modern architectures like data lakes. However, this approach faces different drawbacks for finding and understanding data sources. Ontology-Based Data Access (OBDA) originating from the Semantic Web enables a homogeneous access to the data sources by using a mapping, called semantic model, between a data source and a target ontology. However, OBDA requires a detailed ontology, which is usually created by ontology engineers and domain experts resulting along with high effort for designing and maintaining. To overcome these limitations, we develop an approach consisting of a knowledge graph, which features an internal growing ontology and linked data-source specific semantic models. The ontology continuously evolves on-demand based on newly added data sources along with their corresponding semantic models, which are created by domain experts. To ensure the knowledge graph's stability, we develop an intuitive user-oriented assistant and combine it with a semi-supervised evolving strategy that assists the user with the help of external knowledge bases. We evaluate accuracy and usability of our approach by conducting a user study with a heterogeneous group of participants that define semantic models upon pre-defined data sets. The results show that semantic models become more objective and consistent with our provided user assistant and thus lead to a knowledge graph with higher interconnectivity and stability.
机译:近年来,企业加大了从许多异构数据源中收集大量数据并将其存储在数据湖等现代体系结构中的工作。但是,这种方法在查找和理解数据源方面面临着不同的缺点。源自语义Web的基于本体的数据访问(OBDA)通过使用数据源和目标本体之间的映射(称为语义模型)实现对数据源的同质访问。但是,OBDA需要详细的本体,通常由本体工程师和领域专家创建,并伴随着大量的设计和维护工作。为了克服这些限制,我们开发了一种由知识图组成的方法,该方法以内部增长的本体和链接的数据源特定的语义模型为特征。本体根据新添加的数据源及其对应的语义模型(根据领域专家创建的语义模型)按需不断发展。为了确保知识图的稳定性,我们开发了一个直观的面向用户的助手,并将其与半监督的演变策略相结合,该策略在外部知识库的帮助下为用户提供了帮助。我们通过与一组不同种类的参与者进行用户研究来评估我们方法的准确性和可用性,这些参与者在预定义的数据集上定义了语义模型。结果表明,语义模型变得更加客观并且与我们提供的用户助手相一致,从而导致了具有更高互连性和稳定性的知识图。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号