Learning Expressive Ontologies

Johanna Völker, P. Haase, P. Hitzler
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引用次数: 66

Abstract

The automatic extraction of ontologies from text and lexical resources has become more and more mature. Nowadays, the results of state-of-the-art ontology learning methods are already good enough for many practical applications. However, most of them aim at generating rather inexpressive ontologies, i.e. bare taxonomies and relationships, whereas many reasoning-based applications in domains such as bioinformatics or medicine rely on much more complex axiomatizations. Those are extremely expensive if built by purely manual efforts, and methods for the automatic or semi-automatic construction of expressive ontologies could help to overcome the knowledge acquisition bottleneck. At the same time, a tight integration with ontology evaluation and debugging approaches is required to reduce the amount of manual post-processing which becomes harder the more complex learned ontologies are. Particularly, the treatment of logical inconsistencies, mostly neglected by existing ontology learning frameworks, becomes a great challenge as soon as we start to learn huge and expressive axiomatizations. In this chapter we present several approaches for the automatic generation of expressive ontologies along with a detailed discussion of the key problems and challenges in learning complex OWL ontologies. We also suggest ways to handle different types of inconsistencies in learned ontologies, and conclude with a visionary outlook to future ontology learning and engineering environments.
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学习表达本体
从文本和词汇资源中自动抽取本体的技术已经越来越成熟。目前,最先进的本体学习方法的结果已经足以用于许多实际应用。然而,它们中的大多数旨在生成相当缺乏表达的本体,即简单的分类和关系,而生物信息学或医学等领域的许多基于推理的应用依赖于更复杂的公理化。如果纯手工构建这些本体,成本是非常高的,而用于自动或半自动构建表达性本体的方法可以帮助克服知识获取瓶颈。同时,需要与本体评估和调试方法紧密集成,以减少人工后处理的工作量,因为学习到的本体越复杂,后处理就越困难。特别是,逻辑不一致性的处理,大多被现有的本体学习框架所忽视,一旦我们开始学习庞大而富有表现力的公理,就会成为一个巨大的挑战。在本章中,我们提出了几种自动生成表达本体的方法,并详细讨论了学习复杂OWL本体的关键问题和挑战。我们还提出了处理已学习本体中不同类型不一致性的方法,并对未来的本体学习和工程环境进行了展望。
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Learning Expressive Ontologies
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