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Care to Comment? Recommendations for Commenting on News Stories

机译:愿意发表评论吗?评论新闻故事的建议

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Many websites provide commenting facilities for users to express their opinions or sentiments with regards to content items, such as, videos, news stories, blog posts, etc. Previous studies have shown that user comments contain valuable information that can provide insight on Web documents and may be utilized for various tasks. This work presents a model that predicts, for a given user, suitable news stories for commenting. The model achieves encouraging results regarding the ability to connect users with stories they are likely to comment on. This provides grounds for personalized recommendations of stories to users who may want to take part in their discussion. We combine a content-based approach with a collaborative-filtering approach (utilizing users' co-commenting patterns) in a latent factor modeling framework. We experiment with several variations of the model's loss function in order to adjust it to the problem domain. We evaluate the results on two datasets and show that employing co-commenting patterns improves upon using content features alone, even with as few as two available comments per story. Finally, we try to incorporate available social network data into the model. Interestingly, the social data does not lead to substantial performance gains, suggesting that the value of social data for this task is quite negligible.
机译:许多网站都为用户提供评论工具,以便用户表达对内容项(例如视频,新闻报道,博客文章等)的看法或观点。以前的研究表明,用户评论包含有价值的信息,可以提供有关Web文档和可用于各种任务。这项工作提出了一个模型,该模型为给定的用户预测合适的新闻故事进行评论。该模型在将用户与他们可能会评论的故事联系起来的能力方面取得了令人鼓舞的结果。这为向可能希望参与讨论的用户提供个性化的故事推荐提供了依据。我们在潜在因素建模框架中将基于内容的方法与协作过滤方法(利用用户的共同评论模式)相结合。为了对问题域进行调整,我们尝试了模型损失函数的几种变体。我们在两个数据集上评估了结果,并表明采用共同评论模式可以改善仅使用内容功能的情况,即使每个故事只有两个可用评论也是如此。最后,我们尝试将可用的社交网络数据合并到模型中。有趣的是,社交数据并不能带来实质性的绩效提升,这表明社交数据在此任务上的价值可忽略不计。

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