With the information explosion of news articles, personalized news recommendation has become important for users to quickly find news that they are interested in. Existing methods on news recommendation mainly include collaborative filtering methods which rely on direct user-item interactions and content based methods which characterize the content of user reading history. Although these methods have achieved good performances, they still suffer from data sparse problem, since most of them fail to extensively exploit high-order structure information (similar users tend to read similar news articles) in news recommendation systems. In this paper, we propose to build a heterogeneous graph to explicitly model the interactions among users, news and latent topics. The incorporated topic information would help indicate a user's interest and alleviate the sparsity of user-item interactions. Then we take advantage of graph neural networks to learn user and news representations that encode high-order structure information by propagating embeddings over the graph. The learned user embeddings with complete historic user clicks capture the users' long-term interests. We also consider a user's short-term interest using the recent reading history with an attention based LSTM model. Experimental results on real-world datasets show that our proposed model significantly outperforms state-of-the-art methods on news recommendation.
翻译:随着新闻文章的信息爆炸,个人化的新闻建议变得对用户迅速找到他们感兴趣的新闻非常重要。关于新闻建议的现有方法主要包括合作过滤方法,这些方法依赖直接用户-项目互动和基于内容的方法,这些方法是用户阅读历史内容的特点。虽然这些方法取得了良好的表现,但是它们仍然受到数据稀少的问题,因为大多数方法没有在新闻建议系统中广泛利用高秩序结构信息(不同用户往往阅读类似的新闻文章)。在这份文件中,我们提议建立一个混合图,以明确模拟用户、新闻和潜在主题之间的互动。纳入的专题信息将有助于显示用户的兴趣,减轻用户-项目互动的松散。然后我们利用图形神经网络学习用户和新闻表达,通过在图表上插入信息来编码高秩序结构。学习知识的用户在完全历史用户点击中嵌入能够捕用户的长期利益。我们还考虑利用最近的阅读历史和关注的LSTM光模型来建立用户的短期兴趣。在现实世界数据设置上实验结果显示我们拟议的模型显示我们的拟议模型方法。