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Spatio-Temporal Check-in Time Prediction with Recurrent Neural Network based Survival Analysis

机译:基于复发性神经网络的存活分析的时空检查时间预测

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We introduce a novel check-in time prediction problem. The goal is to predict the time a user will check-in to a given location. We formulate checkin prediction as a survival analysis problem and propose a Recurrent-Censored Regression (RCR) model. We address the key challenge of check-in data scarcity, which is due to the uneven distribution of check-ins among users/locations. Our idea is to enrich the check-in data with potential visitors, i.e., users who have not visited the location before but are likely to do so. RCR uses recurrent neural network to learn latent representations from historical check-ins of both actual and potential visitors, which is then incorporated with censored regression to make predictions. Experiments show RCR outperforms state-of-the-art event time prediction techniques on real-world datasets.
机译:我们介绍了一个新的检查时间预测问题。目标是预测用户将登记到给定位置的时间。我们将Checkin预测标准为生存分析问题,并提出了一种复制截止的回归(RCR)模型。我们解决办理登机数据稀缺的关键挑战,这是由于用户/地点之间的核实分布不均匀。我们的想法是通过潜在的访客来丰富登记数据,即,在之前没有访问过位置但可能这样做的用户。 RCR使用经常性神经网络从实际和潜在访客的历史检查中学习潜在的陈述,然后将其与缩短的回归融合以进行预测。实验显示RCR优于现实世界数据集的最先进的事件时间预测技术。

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