Ontology Learning from Relational Database: Opportunities for Semantic Information Integration

Chuangtao Ma, B. Molnár
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引用次数: 7

Abstract

Along with the rapidly growing scale of relational database (RDB), how to construct domain-related ontologies from various databases effectively and efficiently has been a bottleneck of the ontology-based integration. The traditional methods for constructing ontology from RDB are mainly based on the manual mapping and transformation, which not only requires a lot of human experience but also easily leads to the semantic loss during the transformation. Ontology learning from RDB is a new paradigm to (semi-)automatically construct ontologies from RDB by borrowing the techniques of machine learning, it provides potential opportunities for integrating heterogeneous data from various data sources efficiently. This paper surveys the recent methods and tools of the ontology learning from RDB, and highlights the potential opportunities and challenges of using ontology learning in semantic information integration. Initially, the previous surveys on the topic of the ontology-based integration and ontology learning were summarized, and then the limitations of previous surveys were identified and analyzed. Furthermore, the methods and techniques of ontology learning from RDB were investigated by classifying into three categories: reverse engineering, mapping, and machine learning. Accordingly, the opportunities and possibility of using ontology learning from RDB in semantic information integration were discussed based on the mapping results between the bottlenecks of ontology-based integration and the features of ontology learning. a
从关系数据库学习本体:语义信息集成的机会
随着关系数据库(RDB)规模的快速增长,如何从各种数据库中高效地构建领域相关的本体已成为基于本体集成的瓶颈。传统的基于RDB构建本体的方法主要是基于手工的映射和转换,这不仅需要大量的人工经验,而且在转换过程中容易导致语义丢失。基于RDB的本体学习是一种借鉴机器学习技术从RDB中(半)自动构建本体的新范式,它为有效集成来自不同数据源的异构数据提供了潜在的机会。本文综述了基于RDB的本体学习的最新方法和工具,强调了在语义信息集成中使用本体学习的潜在机遇和挑战。本文首先总结了前人关于基于本体的集成和本体学习的研究成果,然后对前人研究的局限性进行了识别和分析。在此基础上,研究了基于RDB的本体学习方法和技术,并将其分为逆向工程、映射和机器学习三大类。据此,根据基于本体的集成瓶颈与本体学习特征之间的映射结果,讨论了在语义信息集成中使用RDB本体学习的机会和可能性。一个
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