POI recommendation with geographical and multi-tag influences

Zhiyuan Zhang, Yun Liu, Haiqiang Chen, Qing Liu
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引用次数: 4

Abstract

In this paper, we propose a method for point of interest (POI) recommendation by extracting the multi-tag influence and modeling the geographical influence. First of all, we extract a user-tag matrix from the initial user-POI rating matrix by analyzing the relations between POI and the related bag of tags. Secondly, we use the probabilistic factor model to predict the missing data of the extracted matrix. Thirdly, an effective method to model the geographical influence is proposed by considering the location of user and POI and the related region center. Finally, the multi-tag and geographical influence are fused in the process of making prediction of missing value of every POI. Then we will get a great result for POI recommendation. The experimental analysis on the large dataset Yelp demonstrates that our method outperform the state-of-art methods.
POI推荐具有地理和多标签影响
本文提出了一种提取多标签影响并对地理影响建模的兴趣点推荐方法。首先,我们通过分析POI与相关标签袋之间的关系,从初始用户-POI评级矩阵中提取用户-标签矩阵。其次,利用概率因子模型对提取的矩阵的缺失数据进行预测。第三,提出了一种考虑用户和POI位置以及相关区域中心的有效的地理影响建模方法。最后,在对每个POI缺失值进行预测的过程中,融合了多标签和地理影响。然后我们将得到一个很好的POI推荐结果。在Yelp大型数据集上的实验分析表明,我们的方法优于目前的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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