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Multi-feature based Question-Answerer Model Matching for predicting response time in CQA

机译:基于多特征的问答模型匹配,用于预测CQA中的响应时间

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Users of Community Question Answering (CQA) could not manage their time conveniently because their questions are often not answered quickly enough. To address this problem, we try to provide a function for CQA sites to inform users when their questions will be answered. In this paper, we propose a Question-Answerer Model Matching based answerer's response time prediction named (QAM(2)), which consists of two parts: the construction of the Multi-feature based Question-Answerer Model (MQAM, including the answerer model and the question model) and the prediction of question response time based on MQAM Matching Strategy (QAMMS). Firstly, the MQAM is built according to some extracted deep features (e.g., answerer's interest, professional level, activity, question category and difficulty), which are neglected in most existing methods on the prediction of question response time. Herein, the Label Cluster Latent Dirichlet Allocation (LC-LDA) model was proposed to overcome the compulsive allocation behaviors caused by traditional topic models (e.g. LDA), which treats the words that are irrelevant or weakly related to the subject as the topic of short texts when extracting the feature of answerer's interest and question category. Meanwhile, an improved PageRank algorithm-topic sensitive weighted PageRank (TSWPR) is used to eliminate the impact of "indiscriminate" users who have answered many questions with low quality of answers. Secondly, we use the model matching strategy based on multiple classifier for matching MQAM and calculating the question response time of each answerer. Experiments conducted on two real data sets of Stack Overflow show that the proposed method can improve significantly the accuracy of question response time prediction in CQA. (C) 2019 Elsevier B.V. All rights reserved.
机译:社区问题解答(CQA)的用户无法方便地管理他们的时间,因为他们的问题通常没有足够快地得到回答。为了解决这个问题,我们尝试为CQA网站提供一种功能,以通知用户何时将回答他们的问题。在本文中,我们提出了一个基于问题-答案模型匹配的应答者响应时间预测(QAM(2)),它由两部分组成:基于多特征的问题-答案模型(MQAM,包括应答者模型)的构建。和问题模型)以及基于MQAM匹配策略(QAMMS)的问题响应时间的预测。首先,MQAM是根据一些提取的深层特征(例如,回答者的兴趣,专业水平,活动,问题类别和难度)构建的,这些特征在预测问题响应时间的大多数现有方法中都被忽略了。在此,提出了标签聚类潜在狄利克雷分配(LC-LDA)模型,以克服由传统主题模型(例如LDA)引起的强制分配行为,该模型将与主题无关或弱相关的单词视为短主题提取答题者的兴趣和问题类别特征时的文本。同时,使用一种改进的PageRank算法-主题敏感加权PageRank(TSWPR)来消除已经回答了许多问题且答案质量低的“不加区分”用户的影响。其次,我们使用基于多个分类器的模型匹配策略来匹配MQAM并计算每个应答者的问题响应时间。对两个实际的Stack Overflow数据集进行的实验表明,该方法可以显着提高CQA中问题响应时间预测的准确性。 (C)2019 Elsevier B.V.保留所有权利。

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