Bricking Semantic Wikipedia by relation population and predicate suggestion

Haofen Wang, L. Fu, Yong Yu
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引用次数: 1

Abstract

Semantic Wikipedia aims to enhance Wikipedia by adding explicit semantics to links between Wikipedia entities. However, we have observed that it currently suffers the following limitations: lack of semantic annotations and lack of semantic annotators. In this paper, we resort to relation population to automatically extract relations between any entity pair to enrich semantic data, and predicate suggestion to recommend proper relation labels to facilitate semantic annotating. Both tasks leverage relation classification which tries to classify extracted relation instances into predefined relations. However, due to the lack of labeled data and the excessiveness of noise in Semantic Wikipedia, existing approaches cannot be directly applied to these tasks to obtain high-quality annotations. In this paper, to tackle the above problems brought by Semantic Wikipedia, we use a label propagation algorithm and exploit semantic features like domain and range constraints on categories as well as linguistic features such as dependency trees of context sentences in Wikipedia articles. The experimental results on 7 typical relation types show the effectiveness and efficiency of our approach in dealing with both tasks.
用关系填充和谓词提示构建语义维基百科
语义维基百科旨在通过在维基百科实体之间的链接中添加显式语义来增强维基百科。然而,我们观察到它目前存在以下局限性:缺乏语义注释和语义注释器。本文采用关系填充的方法自动抽取任意实体对之间的关系,丰富语义数据;采用谓词建议的方法推荐合适的关系标签,方便语义标注。这两个任务都利用关系分类,试图将提取的关系实例分类到预定义的关系中。然而,由于语义维基百科缺乏标记数据和过多的噪声,现有的方法无法直接应用于这些任务,以获得高质量的注释。为了解决语义维基百科带来的上述问题,本文采用了标签传播算法,并利用了维基百科文章中类别的领域和范围约束等语义特征以及上下文句子的依赖树等语言特征。在7种典型关系类型上的实验结果表明了我们的方法在处理这两个任务时的有效性和效率。
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