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Question Quality Analysis and Prediction in Community Question Answering Services with Coupled Mutual Reinforcement

机译:互助相结合的社区问答服务中的问题质量分析与预测

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Community question answering services (CQAS) (e.g., Yahoo! Answers) provides a platform where people post questions and answer questions posed by others. Previous works analyzed the answer quality (AQ) based on answer-related features, but neglect the question-related features on AQ. Previous work analyzed how asker- and question-related features affect the question quality (QQ) regarding the amount of attention from users, the number of answers and the question solving latency, but neglect the correlation between QQ and AQ (measured by the rating of the best answer), which is critical to quality of service (QoS). We handle this problem from two aspects. First, we additionally use QQ in measuring AQ, and analyze the correlation between a comprehensive list of features (including answer-related features) and QQ. Second, we propose the first method that estimates the probability for a given question to obtain high AQ. Our analysis on the Yahoo! Answers trace confirmed that the list of our identified features exert influence on AQ, which determines QQ. For the correlation analysis, the previous classification algorithms cannot consider the mutual interactions between multiple (> 2) classes of features. We then propose a novel Coupled Semi-Supervised Mutual Reinforcement-based Label Propagation (CSMRLP) algorithm for this purpose. Our extensive experiments show that CSMRLP outperforms the Mutual Reinforcement-based Label Propagation (MRLP) and five other traditional classification algorithms in the accuracy of AQ classification, and the effectiveness of our proposed method in AQ prediction. Finally, we provide suggestions on how to create a question that will receive high AQ, which can be exploited to improve the QoS of CQAS.
机译:社区问题解答服务(CQAS)(例如Yahoo! Answers)提供了一个平台,人们可以在其中发布问题并回答他人提出的问题。先前的作品基于与答案相关的功能分析了答案质量(AQ),但忽略了与AQ相关的与问题相关的功能。先前的工作分析了与提问者和问题相关的功能如何影响问题质量(QQ),这些问题涉及用户的关注程度,答案数量和问题解决潜伏期,但忽略了QQ和AQ之间的相关性(以“最佳答案),这对服务质量(QoS)至关重要。我们从两个方面处理这个问题。首先,我们另外使用QQ来测量AQ,并分析功能(包括与答案相关的功能)的完整列表与QQ之间的相关性。其次,我们提出了第一种方法来估计给定问题获得高AQ的可能性。我们对Yahoo!的分析答案追踪证实,我们已识别特征的列表对AQ有影响,AQ决定了QQ。对于相关性分析,以前的分类算法无法考虑多个(> 2)类特征之间的相互作用。然后,我们为此目的提出了一种新颖的基于半增强的相互监督的相互加强的标签传播(CSMRLP)算法。我们广泛的实验表明,CSMRLP在AQ分类的准确性方面优于传统的基于互增强的标签传播(MRLP)和其他五种传统分类算法,并且在AQ预测中我们提出的方法有效。最后,我们提供有关如何创建一个将获得较高AQ的问题的建议,可以利用该问题来改善CQAS的QoS。

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