Recommender systems are widely applied in digital platforms such as news websites to personalize services based on user preferences. In news websites most of users are anonymous and the only available data is sequences of items in anonymous sessions. Due to this, typical collaborative filtering methods, which are highly applied in many applications, are not effective in news recommendations. In this context, session-based recommenders are able to recommend next items given the sequence of previous items in the active session. Neighborhood-based session-based recommenders has been shown to be highly effective compared to more sophisticated approaches. In this study we propose scenarios to make these session-based recommender systems diversity-aware and to address the filter bubble phenomenon. The filter bubble phenomenon is a common concern in news recommendation systems and it occurs when the system narrows the information and deprives users of diverse information. The results of applying the proposed scenarios show that these diversification scenarios improve the diversity measures in these session-based recommender systems based on four news datasets.
翻译:在数字平台上,如新闻网站等,建议系统被广泛应用,使基于用户偏好的服务个人化。在新闻网站上,大多数用户都是匿名的,唯一的可用数据是匿名会议中项目的顺序。由于这种情况,在许多应用中大量应用的典型合作过滤方法在新闻建议中并不有效。在这方面,基于会议的建议者能够根据当前会议中先前项目的顺序提出下一个项目的建议。以邻居为基础的会议建议者已证明与更为复杂的方法相比是高度有效的。在本研究中,我们提出了使这些基于会议的建议系统多样化认识并解决过滤泡沫现象的假想。过滤泡沫现象是新闻建议系统中常见的一个问题,当系统缩小信息范围并剥夺用户各种信息时,就会发生。应用拟议的假设方案的结果显示,这些多样化设想方案改善了基于四个新闻数据集的基于会议建议系统的多样性措施。