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Expert Identification in Community Question Answering: Exploring Question Selection Bias

机译:社区问答中的专家识别:探索问题选择偏见

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Community Question Answering (CQA) services enables users to ask and answer questions. In these communities, there are typically a small number of experts amongst the large population of users. We study which questions a user select for answering and show that experts prefer answering questions where they have a higher chance of making a valuable contribution. We term this preferential selection as question selection bias and propose a mathematical model to estimate it. Our results show that using Gaussian classification models we can effectively distinguish experts from ordinary users over their selection biases. In order to estimate these biases, only a small amount of data per user is required, which makes an early identification of expertise a possibility. Further, our study of bias evolution reveals that they do not show significant changes over time indicating that they emanates from the intrinsic characteristics of users.
机译:社区问答(CQA)服务使用户可以提问和回答问题。在这些社区中,大量用户中通常只有少数专家。我们研究了用户选择回答的问题,并表明专家更愿意回答那些有较高机会做出有价值贡献的问题。我们称这种优先选择为问题选择偏见,并提出了一个数学模型对其进行估计。我们的结果表明,使用高斯分类模型,我们可以有效地区分专家和普通用户的选择偏见。为了估计这些偏差,每个用户只需要少量的数据,这使得尽早识别专业知识成为可能。此外,我们对偏差演变的研究表明,随着时间的推移,偏差并未显示出明显的变化,表明它们源自用户的内在特征。

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