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A methodology to learn ontological attributes from the Web

机译:从Web学习本体属性的方法

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摘要

Class descriptors such as attributes, features or meronyms are rarely considered when developing ontologies. Even WordNet only includes a reduced amount of part-of relationships. However, these data are crucial for defining concepts such as those considered in classical knowledge representation models. Some attempts have been made to extract those relations from text using general meronymy detection patterns; however, there has been very little work on learning expressive class attributes (including associated domain, range or data values) at an ontological level. In this paper we take this background into consideration when proposing and implementing an automatic, non-supervised and domain-independent methodology to extend ontological classes in terms of learning concept attributes, data-types, value ranges and measurement units. In order to present a general solution and minimize the data sparseness of pattern-based approaches, we use the Web as a massive learning corpus to retrieve data and to infer information distribution using highly contextualized queries aimed at improving the quality of the result. This corpus is also automatically updated in an adaptive manner according to the knowledge already acquired and the learning throughput. Results have been manually checked by means of an expert-based concept-per-concept evaluation for several well distinguished domains showing reliable results and a reasonable learning performance.
机译:在开发本体时,很少考虑使用诸如属性,特征或别名之类的类描述符。甚至WordNet也只包括数量减少的部分关系。但是,这些数据对于定义诸如经典知识表示模型中考虑的概念至关重要。已经进行了一些尝试,使用一般的同义词检测模式从文本中提取这些关系。但是,在本体论级别上学习表现性类属性(包括相关的域,范围或数据值)的工作很少。在本文中,我们在提出和实施一种自动的,非监督的,与领域无关的方法以在学习概念属性,数据类型,值范围和度量单位方面扩展本体论类时,考虑了这一背景。为了提供一种通用的解决方案并最大程度地减少基于模式的方法的数据稀疏性,我们将Web用作大规模的学习语料库,以使用旨在提高结果质量的高度上下文化的查询来检索数据并推断信息分布。该语料库还根据已获取的知识和学习吞吐量以自适应方式自动更新。结果已经通过基于专家的概念/概念评估手动检查了几个出色的领域,显示出可靠的结果和合理的学习效果。

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