Group-Based Recurrent Neural Networks for POI Recommendation

Guohui Li, Qi Chen, Bolong Zheng, Hongzhi Yin, Quoc Viet Hung Nguyen, Xiaofang Zhou
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引用次数: 19

Abstract

With the development of mobile Internet, many location-based services have accumulated a large amount of data that can be used for point-of-interest (POI) recommendation. However, there are still challenges in developing an unified framework to incorporate multiple factors associated with both POIs and users due to the heterogeneity and implicity of this information. To alleviate the problem, this work proposes a novel group-based method for POI recommendation jointly considering the reviews, categories, and geographical locations, called the Group-based Temporal Sentiment-Aspect-Region Recurrent Neural Network (GTSAR-RNN). We divide the users into different groups and then train an individual RNN for each group with the goal of improving its pertinence. In GTSAR-RNN, we consider not only the effects of temporal and geographical contexts but also the users’ sentimental opinions on locations. Experimental results show that GTSAR-RNN acquires significant improvements over the baseline methods on real datasets.
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基于组的递归神经网络POI推荐
随着移动互联网的发展,许多基于位置的服务已经积累了大量的数据,这些数据可以用于兴趣点推荐。然而,由于这些信息的异质性和隐含性,在开发一个统一的框架以合并与poi和用户相关的多个因素方面仍然存在挑战。为了缓解这一问题,本研究提出了一种基于群体的POI推荐方法,该方法将评论、类别和地理位置联合考虑,称为基于群体的时间情感-方面-区域递归神经网络(GTSAR-RNN)。我们将用户分成不同的组,然后为每个组训练一个单独的RNN,目的是提高其针对性。在GTSAR-RNN中,我们不仅考虑了时间和地理环境的影响,还考虑了用户对地点的情感意见。实验结果表明,GTSAR-RNN在实际数据集上比基线方法取得了显著的改进。
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