Jointly Predicting Future Content in Multiple Social Media Sites Based on Multi-task Learning

Peng Zhang, Baoxi Liu, T. Lu, X. Ding, Hansu Gu, Ning Gu
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引用次数: 1

Abstract

User-generated contents (UGC) in social media are the direct expression of users’ interests, preferences, and opinions. User behavior prediction based on UGC has increasingly been investigated in recent years. Compared to learning a person’s behavioral patterns in each social media site separately, jointly predicting user behavior in multiple social media sites and complementing each other (cross-site user behavior prediction) can be more accurate. However, cross-site user behavior prediction based on UGC is a challenging task due to the difficulty of cross-site data sampling, the complexity of UGC modeling, and uncertainty of knowledge sharing among different sites. For these problems, we propose a Cross-Site Multi-Task (CSMT) learning method to jointly predict user behavior in multiple social media sites. CSMT mainly derives from the hierarchical attention network and multi-task learning. Using this method, the UGC in each social media site can obtain fine-grained representations in terms of words, topics, posts, hashtags, and time slices as well as the relevances among them, and prediction tasks in different social media sites can be jointly implemented and complement each other. By utilizing two cross-site datasets sampled from Weibo, Douban, Facebook, and Twitter, we validate our method’s superiority on several classification metrics compared with existing related methods.
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基于多任务学习的多个社交媒体网站未来内容联合预测
社交媒体中的用户生成内容(User-generated content, UGC)是用户兴趣、偏好和观点的直接表达。近年来,基于UGC的用户行为预测研究越来越多。与单独学习一个人在每个社交媒体网站的行为模式相比,联合预测多个社交媒体网站的用户行为,并相互补充(跨站点用户行为预测)可以更准确。然而,由于跨站点数据采样的困难、UGC建模的复杂性以及不同站点之间知识共享的不确定性,基于UGC的跨站点用户行为预测是一项具有挑战性的任务。针对这些问题,我们提出了一种跨站点多任务(CSMT)学习方法来联合预测多个社交媒体网站中的用户行为。CSMT主要来源于分层注意网络和多任务学习。利用该方法,各社交媒体网站的UGC可以获得词、话题、帖子、标签、时间片等方面的细粒度表示,以及它们之间的相关性,不同社交媒体网站的预测任务可以共同实现,相互补充。通过使用来自微博、豆瓣、Facebook和Twitter的两个跨站点数据集,与现有的相关方法相比,我们验证了我们的方法在几个分类指标上的优越性。
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