POI recommendation is a key task in tourism information systems. However, in contrast to conventional point of interest (POI) recommender systems, the available data is extremely sparse; most tourist visit a few sightseeing spots once and most of these spots have no check-in data from new tourists. Most conventional systems rank sightseeing spots based on their popularity, reputations, and category-based similarities with users' preferences. They do not clarify what users can experience in these spots, which makes it difficult to meet diverse tourism needs. To this end, in this work, we propose a mechanism to recommend POIs to tourists. Our mechanism include two components: one is a probabilistic model that reveals the user behaviors in tourism; the other is a pseudo rating mechanism to handle the cold-start issue in POIs recommendations. We carried out extensive experiments with two datasets collected from Flickr. The experimental results demonstrate that our methods are superior to the state-of-the-art methods in both the recommendation performances (precision, recall and F-measure) and fairness. The experimental results also validate the robustness of the proposed methods, i.e., our methods can handle well the issue of data sparsity.
翻译:POI建议是旅游信息系统的一项关键任务。然而,与传统利益点(POI)推荐者系统不同,现有数据极为稀少;大多数旅游者访问少数观光点一次,多数这些点没有新游客的检查数据。大多数传统系统根据游客的广度、声誉和用户偏好等同类别对观光点进行评级,它们没有说明用户在这些点中能够经历什么,从而难以满足不同的旅游需求。为此,我们提议了一个向游客推荐POI的机制。我们的机制包括两个组成部分:一个是概率模型,揭示旅游用户的行为;另一个是假评级机制,处理POIS建议中的冷点问题。我们用从Flickr收集的两个数据集进行了广泛的实验。实验结果显示,我们的方法优于建议业绩(精准、回顾和F度)和公平性两方面的最新方法。实验结果还验证了拟议方法的稳健性,即我们的方法能够很好地处理数据采集问题。