POI Recommendation Method Based on Multi-Source Information Fusion Using Deep Learning in Location-Based Social Networks

Liqiang Sun
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引用次数: 7

Abstract

Sign-in point of interest (POI) are extremely sparse in location-based social networks, hindering recommendation systems from capturing users’ deep-level preferences. To solve this problem, we propose a content-aware POI recommendation algorithm based on a convolutional neural network. First, using convolutional neural networks to process comment text information, we model location POI and user latent factors. Subsequently, the objective function is constructed by fusing users’ geographical information and obtaining the emotional category information. In addition, the objective function comprises matrix decomposition and maximisation of the probability objective function. Finally, we solve the objective function efficiently. The prediction rate and F1 value on the Instagram-NewYork dataset are 78.32% and 76.37%, respectively, and those on the Instagram-Chicago dataset are 85.16% and 83.29%, respectively. Comparative experiments show that the proposed method can obtain a higher precision rate than several other newer recommended methods.
位置社交网络中基于深度学习的多源信息融合POI推荐方法
在基于位置的社交网络中,登录兴趣点(POI)极其稀少,阻碍了推荐系统捕捉用户的深层次偏好。为了解决这一问题,我们提出了一种基于卷积神经网络的内容感知POI推荐算法。首先,利用卷积神经网络对评论文本信息进行处理,对位置POI和用户潜在因素进行建模。随后,通过融合用户地理信息,获取情感类信息,构建目标函数。此外,目标函数还包括矩阵分解和概率目标函数的最大化。最后,有效地求解了目标函数。在instagram -纽约数据集上预测率和F1值分别为78.32%和76.37%,在instagram -芝加哥数据集上预测率和F1值分别为85.16%和83.29%。对比实验表明,该方法比其他几种较新的推荐方法具有更高的精度。
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