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Vote-and-Comment: Modeling the Coevolution of User Interactions in Social Voting Web Sites

机译:投票和评论:建模社交投票网站中用户交互的协同进化

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In social voting Web sites, how do the user actions - up-votes, down-votes and comments - evolve over time? Are there relationships between votes and comments? What is normal and what is suspicious? These are the questions we focus on. We analyzed over 20,000 submissions corresponding to more than 100 million user interactions from three social voting Web sites: Reddit, Imgur and Digg. Our first contribution is two discoveries: (i) the number of comments grows as a power-law on the number of votes and (ii) the time between a submission creation and a user's reaction obeys a log-logistic distribution. Based on these patterns, we propose VnC (Vote-and-Comment), a parsimonious but accurate and scalable model that models the coevolution of user activities. In our experiments on real data, VnC outperformed state-of-the-art baselines on accuracy. Additionally, we illustrate VnC usefulness for forecasting and outlier detection.
机译:在社交投票网站中,用户操作(上投票,下投票和评论)如何随着时间演变?投票和评论之间是否存在关系?什么是正常的,什么是可疑的?这些是我们关注的问题。我们分析了来自三个社交投票网站Reddit,Imgur和Digg的20,000多个提交,对应于超过1亿用户的交互。我们的第一项贡献是两个发现:(i)评论数随着投票数幂律的增长而增长;(ii)从提交提交到用户反应之间的时间服从对数逻辑分布。基于这些模式,我们提出了VnC(投票和评论),它是一种简约但准确而可扩展的模型,可对用户活动的协同演化进行建模。在我们的真实数据实验中,VnC的准确性优于最新的基准。此外,我们说明了VnC对预测和异常值检测的有用性。

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