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Semantic and Time-Dependent Expertise Profiling Models in Community-Driven Knowledge Curation Platforms

机译:社区驱动的知识管理平台中的语义和时效性专业分析模型

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Online collaboration and web-based knowledge sharing have gained momentum as major components of the Web 2.0 movement. Consequently, knowledge embedded in such platforms is no longer static and continuously evolves through experts’ micro-contributions. Traditional Information Retrieval and Social Network Analysis techniques take a document-centric approach to expertise modeling by creating a macro-perspective of knowledge embedded in large corpus of static documents. However, as knowledge in collaboration platforms changes dynamically, the traditional macro-perspective is insufficient for tracking the evolution of knowledge and expertise. Hence, Expertise Profiling is presented with major challenges in the context of dynamic and evolving knowledge. In our previous study, we proposed a comprehensive, domain-independent model for expertise profiling in the context of evolving knowledge. In this paper, we incorporate Language Modeling into our methodology to enhance the accuracy of resulting profiles. Evaluation results indicate a significant improvement in the accuracy of profiles generated by this approach. In addition, we present our profile visualization tool, Profile Explorer, which serves as a paradigm for exploring and analyzing time-dependent expertise profiles in knowledge-bases where content evolves overtime. Profile Explorer facilitates comparative analysis of evolving expertise, independent of the domain and the methodology used in creating profiles.
机译:在线协作和基于Web的知识共享已成为Web 2.0运动的主要组成部分。因此,嵌入在此类平台中的知识不再是静态的,而是通过专家的微观贡献而不断发展的。传统的信息检索和社交网络分析技术通过以宏文档的方式创建嵌入大量静态文档中的知识,从而以文档为中心的方法进行专业知识建模。但是,由于协作平台中的知识会动态变化,因此传统的宏观角度不足以跟踪知识和专业知识的发展。因此,在动态和不断发展的知识背景下,专业知识分析面临着重大挑战。在我们之前的研究中,我们为知识的发展提出了一个全面的,领域无关的模型,用于专业知识描述。在本文中,我们将语言建模纳入我们的方法中,以提高生成的配置文件的准确性。评估结果表明,这种方法生成的轮廓的准确性有了显着提高。此外,我们还提供了配置文件可视化工具Profile Explorer,它是在内容随时间变化的知识库中探索和分析与时间相关的专业知识配置文件的范例。 Profile Explorer有助于对不断发展的专业知识进行比较分析,而与领域和创建概要文件所使用的方法无关。

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