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Session-Based Recommendation -- Case Study on Tencent Weibo

机译:基于会话的推荐-腾讯微博案例研究

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Ten cent Weibo is one of the largest micro-blogging websites in China. There are more than 200 million registered users on Ten cent Weibo, generating over 40 million messages each day. Recommending appealing items to users is a mechanism to reduce the risk of information overload. The task of this paper is to predict whether or not a user will follow an item that has been recommended to the user by Ten cent Weibo. This paper contains two parts: predicting users' interests and distinguish whether the user is busy or available to browse recommended items. We apply several model based collaborative filtering as well as content-based filtering to capture users' interests. Besides, we built an occupied model to distinguish users' state and combined with recommendations methods as the final result. In the paper, we used session-based hamming loss as performance measure. The hamming loss was greatly reduced (40%) with occupied model from 0.187 to 0.13.
机译:百分之十的微博是中国最大的微博客网站之一。腾讯微博上有2亿多注册用户,每天产生超过4000万条消息。向用户推荐具有吸引力的项目是一种减少信息过载风险的机制。本文的任务是预测用户是否会遵循腾讯微博推荐给用户的项目。本文包含两个部分:预测用户的兴趣并区分用户是忙还是闲来浏览推荐项目。我们应用了几种基于模型的协作过滤以及基于内容的过滤来捕获用户的兴趣。此外,我们建立了一个占用模型来区分用户状态,并与推荐方法相结合作为最终结果。在本文中,我们使用基于会话的汉明丢失作为性能度量。占用模型的汉明损失从0.187大大降低了(40%),从0.13降低了。

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