With the rapid growth of location-based social networks (LBSNs), Point-Of-Interest (POI) recommendation has been broadly studied in this decade. Recently, the next POI recommendation, a natural extension of POI recommendation, has attracted much attention. It aims at suggesting the next POI to a user in spatial and temporal context, which is a practical yet challenging task in various applications. Existing approaches mainly model the spatial and temporal information, and memorize historical patterns through user's trajectories for recommendation. However, they suffer from the negative impact of missing and irregular check-in data, which significantly influences the model performance. In this paper, we propose an attention-based sequence-to-sequence generative model, namely POI-Augmentation Seq2Seq (PA-Seq2Seq), to address the sparsity of training set by making check-in records to be evenly-spaced. Specifically, the encoder summarises each check-in sequence and the decoder predicts the possible missing check-ins based on the encoded information. In order to learn time-aware correlation among user history, we employ local attention mechanism to help the decoder focus on a specific range of context information when predicting a certain missing check-in point. Extensive experiments have been conducted on two real-world check-in datasets, Gowalla and Brightkite, for performance and effectiveness evaluation.
翻译:随着基于地点的社会网络(LBSNS)的迅速增长,在本十年中广泛研究了“利点点”建议。最近,POI的下一个建议,即POI建议的自然扩展,引起了人们的极大关注。其目的是在空间和时间背景下向用户推荐下一个POI,这是各种应用中一项实际但具有挑战性的任务。现有办法主要是模拟空间和时间信息,并通过用户的轨迹对历史模式进行记忆,供建议使用。然而,它们受到缺失和不规则的检查数据的负面影响,严重影响了模型性能。在本文件中,我们提出了基于关注的顺序到结果的基因化模型,即POI-Augation Seq2Seqeq(PA-Seq2Seq)(PA-Seq2Seq),目的是解决培训的紧张性,通过对记录进行检查,使记录平时空。具体空间。具体地,编码对每次检查的顺序进行总结,并分解码预测我们可能根据编码的信息进行缺失的检查。我们建议根据编码的信息,在两种情况下,利用一种时间-roblody-tradeal-tradeal-tradeal rocal