面向建模问题在社区问答中的普及

Xiaojun Quan, Yao Lu, Wenyin Liu
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引用次数: 3

摘要

社区问答(QA)已经变得越来越流行,每天都会收到各种各样的问题。其中,有些问题非常有吸引力,受到许多用户的欢迎,而另一些问题则非常繁琐,没有吸引力。在本文中,我们旨在通过建模问题流行度来识别社区QA中的流行问题。定义问题的三个与流行度相关的特征来构建流行度模型:(a)潜在点击率,它反映了一个问题第一眼吸引了多少用户;(b)流行术语,用户从中发现一个问题有吸引力;(c)乏味的不受欢迎的条款。该框架的显著特点是可扩展性,并且可以包含更多的特性。使用来自实际社区QA网站的大规模问题数据集来训练和测试模型。同时,实现了两个著名的分类器,k近邻和支持向量机进行比较。实验结果很好地验证了我们的方法,预测精度远高于基线方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards modeling question popularity in community question answering
Community question answering (QA) has become increasingly popular and received a great variety of questions every day. Among them, some questions are very attractive and popular to many users, while some other questions are very tedious and unattractive. In this paper, we aim to identify popular questions in the community QA through modeling question popularity. Three popularity-related features of questions are defined to build the popularity model: (a) potential hits, which reflect how many users are attracted by a question at their first glance; (b) popular terms, from which users find a question attractive; and (c) tedious unpopular terms. The notable characteristic of the proposed framework is extensibility and more features can be incorporated. A large-scale question dataset from a practical community QA website was used to train and test the model. Meanwhile, two well-known classifiers, k-nearest neighbors and support vector machines, were implemented for comparison. Our approach is well validated by the experimental results with much higher prediction accuracy than the baseline methods.
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