论文标题
新闻推荐方法的研究进度
Research Progress of News Recommendation Methods
论文作者
论文摘要
由于研究人员的AIM可以研究针对不同业务领域的个性化建议,因此在特定领域的推荐方法摘要具有实际意义。新闻推荐系统是有关推荐系统的最早研究领域,也是采用协作过滤方法的最早推荐领域。此外,新闻是实时的,内容丰富,这使得新闻推荐方法比其他领域更具挑战性。因此,本文总结了有关新闻推荐方法的研究进度。从2018年到2020年,开发的新闻推荐方法主要基于深度学习,基于注意力和知识图。截至2020年,有许多新闻推荐方法结合了注意机制和知识图。但是,这些方法都是基于基本方法(协作过滤方法,基于内容的推荐方法和组合两者的混合建议方法)开发的。为了允许研究人员对新闻建议方法的发展过程有详细的了解,根据上述基本方法,本文调查的新闻推荐方法涵盖了将近10年。首先,本文介绍了每种方法的基本思想,然后总结了基于每种方法类别的其他方法的推荐方法,并根据研究结果的时间顺序。最后,本文还总结了面对新闻推荐系统的挑战。
Due to researchers'aim to study personalized recommendations for different business fields, the summary of recommendation methods in specific fields is of practical significance. News recommendation systems were the earliest research field regarding recommendation systems, and were also the earliest recommendation field to apply the collaborative filtering method. In addition, news is real-time and rich in content, which makes news recommendation methods more challenging than in other fields. Thus, this paper summarizes the research progress regarding news recommendation methods. From 2018 to 2020, developed news recommendation methods were mainly deep learning-based, attention-based, and knowledge graphs-based. As of 2020, there are many news recommendation methods that combine attention mechanisms and knowledge graphs. However, these methods were all developed based on basic methods (the collaborative filtering method, the content-based recommendation method, and a mixed recommendation method combining the two). In order to allow researchers to have a detailed understanding of the development process of news recommendation methods, the news recommendation methods surveyed in this paper, which cover nearly 10 years, are divided into three categories according to the abovementioned basic methods. Firstly, the paper introduces the basic ideas of each category of methods and then summarizes the recommendation methods that are combined with other methods based on each category of methods and according to the time sequence of research results. Finally, this paper also summarizes the challenges confronting news recommendation systems.