Combining Explicit Entity Graph with Implicit Text Information for News Recommendation

Xuanyu Zhang, Qing Yang, Dongliang Xu
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引用次数: 15

Abstract

News recommendation is very crucial for online news services to improve user experience and alleviate information overload. Precisely learning representations of news and users is the core problem in news recommendation. Existing models usually focus on implicit text information to learn corresponding representations, which may be insufficient for modeling user interests. Even if entity information is considered from external knowledge, it may still not be used explicitly and effectively for user modeling. In this paper, we propose a novel news recommendation approach, which combine explicit entity graph with implicit text information. The entity graph consists of two types of nodes and three kinds of edges, which represent chronological order, related and affiliation relationship. Then graph neural network is utilized for reasoning on these nodes. Extensive experiments on a real-world dataset, Microsoft News Dataset (MIND), validate the effectiveness of our proposed approach.
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结合显式实体图和隐式文本信息的新闻推荐
新闻推荐是网络新闻服务改善用户体验、缓解信息过载的关键。准确学习新闻和用户的表征是新闻推荐的核心问题。现有的模型通常侧重于隐式文本信息来学习相应的表示,这可能不足以对用户兴趣进行建模。即使从外部知识中考虑实体信息,也可能无法明确有效地将其用于用户建模。本文提出了一种将显式实体图与隐式文本信息相结合的新闻推荐方法。实体图由两类节点和三种边组成,它们分别表示时间顺序、关联关系和隶属关系。然后利用图神经网络对这些节点进行推理。在真实世界数据集微软新闻数据集(MIND)上进行的大量实验验证了我们提出的方法的有效性。
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