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Ranking Biomedical Annotations with Annotators Semantic Relevancy

机译:使用注释者的语义相关性对生物医学注释进行排名

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摘要

Biomedical annotation is a common and affective artifact for researchers to discuss, show opinion, and share discoveries. It becomes increasing popular in many online research communities, and implies much useful information. Ranking biomedical annotations is a critical problem for data user to efficiently get information. As the annotator's knowledge about the annotated entity normally determines quality of the annotations, we evaluate the knowledge, that is, semantic relationship between them, in two ways. The first is extracting relational information from credible websites by mining association rules between an annotator and a biomedical entity. The second way is frequent pattern mining from historical annotations, which reveals common features of biomedical entities that an annotator can annotate with high quality. We propose a weighted and concept-extended RDF model to represent an annotator, a biomedical entity, and their background attributes and merge information from the two ways as the context of an annotator. Based on that, we present a method to rank the annotations by evaluating their correctness according to user's vote and the semantic relevancy between the annotator and the annotated entity. The experimental results show that the approach is applicable and efficient even when data set is large.
机译:生物医学注释是研究人员讨论,发表观点和分享发现的常见情感工具。它在许多在线研究社区中变得越来越流行,并且蕴含着许多有用的信息。对生物医学注释进行排名是数据用户有效获取信息的关键问题。由于注释者对被注释实体的知识通常决定注释的质量,因此我们以两种方式评估知识,即注释之间的语义关系。首先是通过挖掘注释者和生物医学实体之间的关联规则从可信网站中提取关系信息。第二种方法是从历史注释中进行频繁的模式挖掘,这揭示了注释者可以高质量注释的生物医学实体的共同特征。我们提出了一个加权概念扩展的RDF模型,以表示一个注释器,一个生物医学实体及其背景属性,并合并来自两种方式的信息作为注释器的上下文。基于此,我们提出了一种通过根据用户的投票以及注释者与被注释实体之间的语义相关性评估注释的正确性来对注释进行排名的方法。实验结果表明,即使数据集很大,该方法仍然适用且有效。

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