Questions in Community Question Answering (CQA) sites are recommended to users, mainly based on users' interest extracted from questions that users have answered or have asked. However, there is a general phenomenon that users answer fewer questions while pay more attention to follow questions and vote answers. This can impact the performance when recommending questions to users (for obtaining their answers) by using their historical answering behaviors on existing studies. To address the data sparsity issue, we propose AskMe, which aims to leverage the rich, hybrid behavior interactions in CQA to improve the question recommendation performance. On the one hand, we model the rich correlations between the users' diverse behaviors (e.g., answer, follow, vote) to obtain the individual-level behavior interaction. On the other hand, we model the sophisticated behavioral associations between similar users to obtain the community-level behavior interaction. Finally, we propose the way of element-level fusion to mix these two kinds of interactions together to predict the ranking scores. A dataset collected from Zhihu (1126 users, 219434 questions) is utilized to evaluate the performance of the proposed model, and the experimental results show that our model has gained the best performance compared to baseline methods, especially when the historical answering behaviors data is scarce.
翻译:社区问题解答(CQA)网站的问题向用户推荐,主要基于用户对用户已经回答或提问的问题的兴趣。然而,有一个普遍的现象,即用户回答的问题较少,而更关注问题和投票回答。这在向用户建议问题(为获得答案)时会影响业绩。为了解决数据宽度问题,我们建议 " 问题 ",目的是利用 " 问题解答(CQA)中的丰富、混合行为互动来改进问题建议性能。一方面,我们模拟用户不同行为(例如,回答,跟踪,投票)之间的丰富相互关系,以获得个人层面的行为互动。另一方面,我们模拟类似用户之间复杂的行为协会,以获得社区层面的行为互动。最后,我们建议如何在元素层面将这两种互动相结合,以预测分数。从Zhihu(1126)用户收集的数据集,2,9434个问题)被用来评估拟议模型的绩效,特别是实验性模型显示我们最接近的历史行为模型时,特别是实验性模型显示我们最接近的模型。