Recommending points of interest is a difficult problem that requires precise location information to be extracted from a location-based social media platform. Another challenging and critical problem for such a location-aware recommendation system is modelling users' preferences based on their historical behaviors. We propose a location-aware recommender system based on Bidirectional Encoder Representations from Transformers for the purpose of providing users with location-based recommendations. The proposed model incorporates location data and user preferences. When compared to predicting the next item of interest (location) at each position in a sequence, our model can provide the user with more relevant results. Extensive experiments on a benchmark dataset demonstrate that our model consistently outperforms a variety of state-of-the-art sequential models.
翻译:建议感兴趣的点是一个难题,需要从基于地点的社交媒体平台中提取准确的定位信息。对于这种基于地点的建议系统来说,另一个具有挑战性和关键的问题就是根据用户的历史行为来模拟用户的偏好。我们提出了一个基于来自变换器的双向编码器代表的定位识别建议系统,目的是向用户提供基于地点的建议。拟议的模型包含定位数据和用户偏好。与预测每个位置的下一个感兴趣项目(地点)相较,我们的模型可以向用户提供更相关的结果。一个基准数据集的广泛实验表明,我们的模型始终超越各种最先进的顺序模型。