SPORE: A sequential personalized spatial item recommender system

Weiqing Wang, Hongzhi Yin, S. Sadiq, Ling Chen, M. Xie, Xiaofang Zhou
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引用次数: 93

Abstract

With the rapid development of location-based social networks (LBSNs), spatial item recommendation has become an important way of helping users discover interesting locations to increase their engagement with location-based services. Although human movement exhibits sequential patterns in LBSNs, most current studies on spatial item recommendations do not consider the sequential influence of locations. Leveraging sequential patterns in spatial item recommendation is, however, very challenging, considering 1) users' check-in data in LBSNs has a low sampling rate in both space and time, which renders existing prediction techniques on GPS trajectories ineffective; 2) the prediction space is extremely large, with millions of distinct locations as the next prediction target, which impedes the application of classical Markov chain models; and 3) there is no existing framework that unifies users' personal interests and the sequential influence in a principled manner. In light of the above challenges, we propose a sequential personalized spatial item recommendation framework (SPORE) which introduces a novel latent variable topic-region to model and fuse sequential influence with personal interests in the latent and exponential space. The advantages of modeling the sequential effect at the topic-region level include a significantly reduced prediction space, an effective alleviation of data sparsity and a direct expression of the semantic meaning of users' spatial activities. Furthermore, we design an asymmetric Locality Sensitive Hashing (ALSH) technique to speed up the online top-k recommendation process by extending the traditional LSH. We evaluate the performance of SPORE on two real datasets and one large-scale synthetic dataset. The results demonstrate a significant improvement in SPORE's ability to recommend spatial items, in terms of both effectiveness and efficiency, compared with the state-of-the-art methods.
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《孢子》:连续的个性化空间道具推荐系统
随着基于位置的社交网络(LBSNs)的快速发展,空间项目推荐已经成为帮助用户发现感兴趣的位置以提高用户对基于位置的服务的参与度的一种重要方式。虽然人类运动在LBSNs中表现出顺序模式,但目前大多数关于空间项目建议的研究并未考虑位置的顺序影响。然而,在空间项目推荐中利用序列模式是非常具有挑战性的,考虑到1)LBSNs中用户签到数据在空间和时间上的采样率都很低,这使得现有的GPS轨迹预测技术无效;2)预测空间非常大,数以百万计的不同位置作为下一个预测目标,阻碍了经典马尔可夫链模型的应用;3)没有一个将用户的个人利益和后续影响以原则性的方式统一起来的框架。针对上述挑战,我们提出了一个序列个性化空间项目推荐框架(SPORE),该框架引入了一个新的潜在变量主题区域,在潜在空间和指数空间中建模和融合序列影响与个人兴趣。在主题-区域层面对序列效应进行建模的优势包括显著减小预测空间、有效缓解数据稀疏性、直接表达用户空间活动的语义等。此外,我们设计了一种非对称局部敏感哈希(ALSH)技术,通过扩展传统的LSH来加快在线top-k推荐过程。我们在两个真实数据集和一个大规模合成数据集上评估了SPORE的性能。结果表明,与最先进的方法相比,SPORE推荐空间项目的能力在有效性和效率方面都有显着提高。
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