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Text Analytics for Predicting Question Acceptance Rates

机译:文本分析预测问题接受率

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摘要

Online community question answering (CQA) services have gained unprecedented popularity among users wanting to voluntarily exchange solutions without a fee. However, CQA faces two challenges: the growing volume of databases and the increasing number of questions left unanswered. This article proposes classification in text analytics as one way to predict how likely a posted question is to be answered. This involves evaluating the features that characterize the question to understand why community members are or aren't answering it. Insights from text analytics could help CQA managers guide users regarding posting etiquette, thereby retaining such services' appeal and ensuring healthy knowledge growth. This study presents a feasible solution to tackle these two problems in CQA, and does so with promising results--particularly in classification by data stream mining with accelerated swarm search feature selection.
机译:在线社区问答(CQA)服务在希望自愿免费交换解决方案的用户中获得了空前的普及。但是,CQA面临两个挑战:数据库数量的增长和未解决问题的数量不断增加。本文提出了文本分析中的分类方法,作为预测发布的问题被回答的可能性的一种方法。这涉及评估表征该问题的功能,以了解为什么社区成员回答或不回答。来自文本分析的见解可以帮助CQA经理指导用户发布礼节,从而保持此类服务的吸引力并确保健康的知识增长。这项研究提出了解决CQA中这两个问题的可行解决方案,并取得了可喜的结果-特别是在通过数据流挖掘进行分类和加速群体搜索特征选择的分类中。

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