一个使用条件随机场进行语义注释和本体填充的平台

B. Grilhères, C. Beauce, S. Canu, S. Brunessaux
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引用次数: 7

摘要

本体被广泛用于组织和共享知识。但是,详细阐述这些资源是一项繁重而耗时的任务。本文分为两部分:一是介绍了EADS DCS文本挖掘平台,特别是其对文档进行语义标注的服务;二是介绍了其对本体增量学习的扩展。领域专家通过最新的机器学习技术(即条件随机场)协助本体填充任务。将本体的注释与经过训练的CRF模型的注释进行比较,从而检测候选实例。通过专家控制的迭代过程,实现知识发现和准确本体的构建。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A platform for semantic annotations and ontology population using conditional random fields
Ontologies are widely used for organising and sharing knowledge. But elaborating these resources is a heavy and time-consuming task. This paper is two-fold: it describes EADS DCS text-mining platform, in particular, its service to annotate documents with semantic tags and it presents its extension for incremental learning of ontologies. Domain experts are assisted in the ontology population task by recent machine learning techniques (i.e. conditional random fields). Comparisons are made between annotations from the ontology and from a trained CRF model, so as to detect candidate instances. An iterative process controlled by the experts results in knowledge discovery and constitution of an accurate ontology.
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