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Network Embedding-Aware Point-of-Interest Recommendation in Location-Based Social Networks

机译:网络嵌入感知感知在基于位置的社交网络中的兴趣点推荐

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As one of the important techniques to explore unknown places for users, the methods that are proposed for point-of-interest (POI) recommendation have been widely studied in recent years. Compared with traditional recommendation problems, POI recommendations are suffering from more challenges, such as the cold-start and one-class collaborative filtering problems. Many existing studies have focused on how to overcome these challenges by exploiting different types of contexts (e.g., social and geographical information). However, most of these methods only model these contexts as regularization terms, and the deep information hidden in the network structure has not been fully exploited. On the other hand, neural network-based embedding methods have shown its power in many recommendation tasks with its ability to extract high-level representations from raw data. According to the above observations, to well utilize the network information, a neural network-based embedding method (node2vec) is first exploited to learn the user and POI representations from a social network and a predefined location network, respectively. To deal with the implicit feedback, a pair-wise ranking-based method is then introduced. Finally, by regarding the pretrained network representations as the priors of the latent feature factors, an embedding-based POI recommendation method is proposed. As this method consists of an embedding model and a collaborative filtering model, when the training data are absent, the predictions will mainly be generated by the extracted embeddings. In other cases, this method will learn the user and POI factors from these two components. Experiments on two real-world datasets demonstrate the importance of the network embeddings and the effectiveness of our proposed method.
机译:作为探索用户不知名地点的重要技术之一,近年来广泛研究了针对兴趣点(POI)推荐的方法。与传统推荐问题相比,POI建议遭受更多挑战,例如冷启动和单级协同过滤问题。许多现有的研究专注于如何通过利用不同类型的背景(例如,社会和地理信息)来克服这些挑战。但是,大多数这些方法仅将这些上下文模拟为正则化术语,并且隐藏在网络结构中的深度信息尚未充分利用。另一方面,基于神经网络的嵌入方法已经在许多推荐任务中显示了其功率,其能够从原始数据中提取高级表示。根据上述观察,利用网络信息,首先利用神经网络的嵌入方法(Node2VEC),以便分别从社交网络和预定义位置网络中学习用户和POI表示。为了处理隐式反馈,然后引入基于对基于排名的方法。最后,通过将预借预定的网络表示作为潜在特征因素的前沿,提出了一种基于嵌入的POI推荐方法。由于该方法包括嵌入模型和协作滤波模型,当不存在训练数据时,预测将主要由提取的嵌入品产生。在其他情况下,该方法将从这两个组件中学习用户和POI因子。两个现实世界数据集的实验证明了网络嵌入的重要性以及我们提出的方法的有效性。

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