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A Knowledge Adoption Model Based Framework for Finding Helpful User- Generated Contents in Online Communities

机译:基于知识采用模型的框架,用于在在线社区中查找有用的用户生成的内容

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Many online communities allow their members to provide information helpfulness judgments that can be used to guide other users to useful contents quickly. However, it is a serious challenge to solicit enough user participation in providing feedbacks in online communities. Existing studies on assessing the helpfulness of user-generated contents are mainly based on heuristics and lack of a unifying theoretical framework. In this article we propose a text classification framework for finding helpful user-generated contents in online knowledge-sharing communities. The objective of our framework is to help a knowledge seeker find helpful information that can be potentially adopted. The framework is built on the Knowledge Adoption Model that considers both content-based argument quality and information source credibility. We identify 6 argument quality dimensions and 3 source credibility dimensions based on information quality and psychological theories. Using data extracted from a popular online community, our empirical evaluations show that all the dimensions improve the performance over a traditional text classification technique that considers word-based lexical features only.
机译:许多在线社区允许其成员提供信息有用性判断,这些判断可用于指导其他用户快速获取有用的内容。但是,在在线社区中提供反馈时,要吸引足够的用户参与是一个严峻的挑战。现有的评估用户生成内容的有用性的研究主要基于启发式方法,并且缺乏统一的理论框架。在本文中,我们提出了一个文本分类框架,用于在在线知识共享社区中找到有用的用户生成的内容。我们框架的目标是帮助知识寻求者找到可以被采用的有用信息。该框架基于知识采用模型,该模型同时考虑了基于内容的论点质量和信息源信誉。基于信息质量和心理学理论,我们确定了6个论点质量维度和3个来源可信度维度。使用从流行的在线社区中提取的数据,我们的经验评估表明,与仅考虑基于单词的词法特征的传统文本分类技术相比,所有维度均提高了性能。

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