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Learning Recommendations in Social Media Systems by Weighting Multiple Relations

机译:通过加权多态关系学习社交媒体系统中的建议

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We address the problem of item recommendation in social media sharing systems. We adopt a multi-relational framework capable to integrate different entity types available in the social media system and relations between the entities. We then model different recommendation tasks as weighted random walks in the relational graph. The main contribution of the paper is a novel method for learning the optimal contribution of each relation to a given recommendation task, by minimizing a loss function on the training dataset. We report results of the relation weight learning for two common tasks on the Flickr dataset, tag recommendation for images and contact recommendation for users.
机译:我们解决了社交媒体共享系统中项目建议的问题。我们采用了一种能够将社交媒体系统中可用的不同实体类型的多关系框架和实体之间的关系集成。然后,我们将不同的推荐任务模拟为关系图中的加权随机散步。本文的主要贡献是通过最大限度地减少训练数据集的损失函数来了解每个关系到给定推荐任务的最佳贡献的新方法。我们报告了Flickr DataSet上的两个常见任务的关系重量学习的结果,标签推荐用于用户的图像和联系方式。

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