Metric-based ontology learning

G. Yang, Jamie Callan
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引用次数: 7

Abstract

Ontology learning is an important task in Artificial Intelligence, Semantic Web and Text Mining. This paper presents a novel framework for, and solutions to, three practical problems in ontology learning. An incremental clustering approach is used to solve the problem of unknown group names. Learned models at each level of an ontology address the problem of no control over concept abstractness. A metric learning module moves beyond the limitation of traditional use of features and incorporates heterogeneous semantic evidence into the learning process. The metric-based learning framework integrates these separate components into a single, unified solution. An extensive evaluation with WordNet and Open Directory Project data demonstrates that the method is more effective than a state-of-the-art baseline algorithm.
基于度量的本体学习
本体学习是人工智能、语义网和文本挖掘领域的重要课题。本文针对本体学习中的三个实际问题提出了一个新的框架和解决方案。采用增量聚类方法解决未知组名问题。在本体的每个层次上学习的模型解决了无法控制概念抽象性的问题。度量学习模块超越了传统特征使用的限制,将异构语义证据纳入学习过程。基于度量的学习框架将这些独立的组件集成到一个单一的、统一的解决方案中。对WordNet和开放目录项目数据的广泛评估表明,该方法比最先进的基线算法更有效。
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