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Exploring Question Selection Bias to Identify Experts and Potential Experts in Community Question Answering

机译:探索问题选择偏向,以识别社区问题解答中的专家和潜在专家

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Community Question Answering (CQA) services enable their users to exchange knowledge in the form of questions and answers. These communities thrive as a result of a small number of highly active users, typically called experts, who provide a large number of high-quality useful answers. Expert identification techniques enable community managers to take measures to retain the experts in the community. There is further value in identifying the experts during the first few weeks of their participation as it would allow measures to nurture and retain them. In this article we address two problems: (a) How to identify current experts in CQA? and (b) How to identify users who have potential of becoming experts in future (potential experts)? In particular, we propose a probabilistic model that captures the selection preferences of users based on the questions they choose for answering. The probabilistic model allows us to run machine learning methods for identifying experts and potential experts. Our results over several popular CQA datasets indicate that experts differ considerably from ordinary users in their selection preferences; enabling us to predict experts with higher accuracy over several baseline models. We show that selection preferences can be combined with baseline measures to improve the predictive performance even further.
机译:社区问答(CQA)服务使他们的用户能够以问题和答案的形式交换知识。这些社区之所以能够蓬勃发展,是因为有少数通常称为专家的高度活跃的用户,他们提供了大量高质量的有用答案。专家识别技术使社区管理员能够采取措施将专家留在社区中。在专家参与的最初几周内确定他们的价值,因为这将有助于培育和留住专家。在本文中,我们解决两个问题:(a)如何确定CQA的现有专家? (b)如何确定将来有可能成为专家的用户(潜在专家)?特别地,我们提出一种概率模型,该模型基于用户选择回答的问题来捕获用户的选择偏好。概率模型使我们可以运行机器学习方法来识别专家和潜在专家。我们对几个流行的CQA数据集的结果表明,专家在选择偏好方面与普通用户大不相同。使我们能够在多个基准模型上以更高的准确性预测专家。我们表明选择偏好可以与基线度量结合起来以进一步提高预测性能。

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