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Modeling Heterogeneous Influences for Point-of-Interest Recommendation in Location-Based Social Networks

机译:基于位置的社交网络中针对兴趣点推荐的异构影响建模

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The huge amount of heterogeneous information in location-based social networks (LBSNs) creates great challenges for POI recommendation. User check-in behavior exhibits two properties, diversity and imbalance. To effectively model both properties, we propose an Aspect-aware Geo-Social Matrix Factorization (AGS-MF) approach to exploit various factors in a unified manner for more effective POI recommendation. Specifically, we first construct a novel knowledge graph (KG), named as Aspect-aware Geo-Social Influence Graph (AGS-IG), to unify multiple influential factors by integrating the heterogeneous information about users, POIs and aspects from reviews. We design an efficient meta-path based random walk to discover relevant neighbors of each user and POI based on multiple influential factors. The extracted neighbors are further incorporated into AGS-MF with automatically learned personalized weights for each user and POI. By doing so, both diversity and imbalance can be modeled for better capturing the characteristics of users and POIs. Experimental results on several real-world datasets demonstrate that AGS-MF outperforms state-of-the-art methods.
机译:基于位置的社交网络(LBSN)中的大量异构信息为POI推荐提出了巨大挑战。用户签到行为表现出两个属性:多样性和不平衡。为了有效地对这两个属性进行建模,我们提出了一种面向方面的地域社会矩阵分解(AGS-MF)方法,以统一的方式利用各种因素,以实现更有效的POI推荐。具体来说,我们首先构建一个新颖的知识图(KG),称为方面感知的地缘社会影响图(AGS-IG),以通过整合有关用户,POI和评论方面的异类信息来统一多个影响因素。我们设计了一个有效的基于元路径的随机游动,以基于多个影响因素发现每个用户和POI的相关邻居。所提取的邻居进一步合并到AGS-MF中,并具有针对每个用户和POI的自动学习的个性化权重。通过这样做,可以对多样性和不平衡进行建模,以更好地捕获用户和POI的特征。在多个实际数据集上的实验结果表明,AGS-MF的性能优于最先进的方法。

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