With the wide adoption of mobile devices and web applications, location-based social networks (LBSNs) offer large-scale individual-level location-related activities and experiences. Next point-of-interest (POI) recommendation is one of the most important tasks in LBSNs, aiming to make personalized recommendations of next suitable locations to users by discovering preferences from users' historical activities. Noticeably, LBSNs have offered unparalleled access to abundant heterogeneous relational information about users and POIs (including user-user social relations, such as families or colleagues; and user-POI visiting relations). Such relational information holds great potential to facilitate the next POI recommendation. However, most existing methods either focus on merely the user-POI visits, or handle different relations based on over-simplified assumptions while neglecting relational heterogeneities. To fill these critical voids, we propose a novel framework, MEMO, which effectively utilizes the heterogeneous relations with a multi-network representation learning module, and explicitly incorporates the inter-temporal user-POI mutual influence with the coupled recurrent neural networks. Extensive experiments on real-world LBSN data validate the superiority of our framework over the state-of-the-art next POI recommendation methods.
翻译:随着移动设备和网络应用的广泛采用,基于地点的社会网络(LBSNS)提供了大规模个人一级与地点有关的活动和经验; 下一个利益点建议是LBSNS最重要的任务之一,目的是通过发现用户历史活动的偏好,向用户提出下一个适当地点的个人化建议; 很明显,LBSNS提供了无与伦比的获取关于用户和POI(包括家庭或同事等用户-用户社会关系;以及用户-POI访问关系)的大量不同关系信息的机会; 这种关系信息对于促进下一个POI建议有很大的潜力。然而,大多数现有方法要么仅仅侧重于用户-POI访问,要么根据过于简化的假设处理不同关系,同时忽视关系差异性。为填补这些关键空白,我们提议了一个新框架,即MEMO,它有效地利用与多网络代表学习模块的多种关系,并明确纳入当前用户-POI的相互影响,与下一个经常性的神经网络。