稀疏检入数据上连续POI推荐的类别感知深度模型

Fuqiang Yu, Li-zhen Cui, Wei Guo, Xudong Lu, Qingzhong Li, Hua Lu
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引用次数: 82

摘要

随着大量的POI签入数据的积累,连续的兴趣点(POI)建议越来越受欢迎。现有的连续POI推荐方法只预测用户下一步将去哪里,而忽略了这种行为何时发生。在这项工作中,我们专注于预测用户在未来24小时内将访问的poi。由于签入数据非常稀疏,因此在时间模式中准确捕获用户偏好是一项挑战。为此,我们提出了一种包含POI类别和地理影响的类别感知深度模型CatDM,以减少搜索空间,克服数据稀疏性。我们设计了两个基于LSTM的深度编码器来对时间序列数据建模。第一个编码器捕获POI类别中的用户首选项,而第二个编码器利用POI中的用户首选项。考虑到第二个编码器的时钟影响,我们将每个用户的签到历史划分为几个不同的时间窗口,并为每个窗口开发个性化的注意力机制,以促进CatDM利用时间模式。此外,为了对候选集进行排序,我们考虑了四种特定的依赖关系:用户- poi、用户类别、poi时间和poi用户当前偏好。在两个大型真实数据集上进行了大量的实验。实验结果表明,我们的CatDM在稀疏签入数据上的连续POI推荐方面优于最先进的模型。
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A Category-Aware Deep Model for Successive POI Recommendation on Sparse Check-in Data
As considerable amounts of POI check-in data have been accumulated, successive point-of-interest (POI) recommendation is increasingly popular. Existing successive POI recommendation methods only predict where user will go next, ignoring when this behavior will occur. In this work, we focus on predicting POIs that will be visited by users in the next 24 hours. As check-in data is very sparse, it is challenging to accurately capture user preferences in temporal patterns. To this end, we propose a category-aware deep model CatDM that incorporates POI category and geographical influence to reduce search space to overcome data sparsity. We design two deep encoders based on LSTM to model the time series data. The first encoder captures user preferences in POI categories, whereas the second exploits user preferences in POIs. Considering clock influence in the second encoder, we divide each user’s check-in history into several different time windows and develop a personalized attention mechanism for each window to facilitate CatDM to exploit temporal patterns. Moreover, to sort the candidate set, we consider four specific dependencies: user-POI, user-category, POI-time and POI-user current preferences. Extensive experiments are conducted on two large real datasets. The experimental results demonstrate that our CatDM outperforms the state-of-the-art models for successive POI recommendation on sparse check-in data.
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