H. Ziaimatin, T. Groza, Georgeta Bordea, P. Buitelaar, J. Hunter
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引用次数: 8
摘要
专业知识建模一直是信息检索(Information Retrieval, IR)和社会网络分析(Social Network Analysis, SNA)两个主要学科广泛研究的主题。IR和SNA方法都通过以文档为中心的方法来构建专家模型,该方法提供了从大型静态文档语料库中出现的知识的宏观视角。随着Web of Data的出现,通过微贡献,从静态文档到不断发展的文档已经发生了重大转变。因此,现有的宏观视角不再足以跟踪知识和专门技术的演变。在本文中,我们提出了一个全面的,领域不可知论的模型,用于动态,活文档和不断发展的知识库背景下的专业知识分析。我们展示了它在生物医学领域的应用,并使用两个手动创建的数据集分析了它的性能。
Expertise Profiling in Evolving Knowledge- curation Platforms
Expertise modeling has been the subject of extensive research in two main disciplines: Information Retrieval (IR) and Social Network Analysis (SNA). Both IR and SNA approaches build the expertise model through a document-centric approach providing a macro-perspective on the knowledge emerging from large corpus of static documents. With the emergence of the Web of Data there has been a significant shift from static to evolving documents, through micro-contributions. Thus, the existing macro-perspective is no longer sufficient to track the evolution of both knowledge and expertise. In this paper we present a comprehensive, domain-agnostic model for expertise profiling in the context of dynamic, living documents and evolving knowledge bases. We showcase its application in the biomedical domain and analyze its performance using two manually created datasets.