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Diversification recommendation of popular articles in micro-blog scenario

机译:微博场景下热门文章的多元化推荐

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With the information overload in web services, micro-blog has been increasingly providing as a media for end-users to express their opinions. The notable feature of micro-blog articles is prone to be a burst of popularity during a short period. In addition, diverse interests make users bored in redundant items in most recommender systems. Therefore, providing users with diverse popular micro-blogs that suit their interesting topics is an important issue. In this paper, depending on forwarding number and comment number of micro-blogs, an effective model for popularity prediction is proposed to discover popular topics. Then, a MaxMin diversity algorithm based on content distance and popularity density is proposed to discover top k micro-blogs. Finally, we design a diverse personalized popularity attention (DPPA) recommendation approach for target user. We conduct extensive experiments on large scale micro-blog datasets. The experimental results show that our proposed approach can satisfy user's requirements with a higher recall than personal attention methods.
机译:随着Web服务中信息的过载,微博客已越来越多地提供为最终用户表达意见的媒体。微博文章的显着特征是在短期内容易流行。另外,各种各样的兴趣使用户对大多数推荐系统中的多余项感到厌烦。因此,为用户提供适合他们感兴趣主题的各种流行微博是一个重要问题。本文根据微博的转发数量和评论数量,提出了一种有效的流行度预测模型,以发现流行话题。然后,提出了一种基于内容距离和流行度密度的MaxMin分集算法来发现前k个微博。最后,我们为目标用户设计了多样化的个性化受欢迎程度(DPPA)推荐方法。我们对大型微博客数据集进行了广泛的实验。实验结果表明,与个人关注方法相比,我们提出的方法可以更好地满足用户需求。

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