Predicting Future Location Categories of Users in a Large Social Platform

Raiyan Abdul Baten, Yozen Liu, Heinrich Peters, Francesco Barbieri, Neil Shah, Leonardo Neves, M. Bos
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引用次数: 1

Abstract

Understanding the users' patterns of visiting various location categories can help online platforms improve content personalization and user experiences. Current literature on predicting future location categories of a user typically employs features that can be traced back to the user, such as spatial geo-coordinates and demographic identities. Moreover, existing approaches commonly suffer from cold-start and generalization problems, and often cannot specify when the user will visit the predicted location category. In a large social platform, it is desirable for prediction models to avoid using user-identifiable data, generalize to unseen and new users, and be able to make predictions for specific times in the future. In this work, we construct a neural model, LocHabits, using data from Snapchat. The model omits user-identifiable inputs, leverages temporal and sequential regularities in the location category histories of Snapchat users and their friends, and predicts the users' next-hour location categories. We evaluate our model on several real-life, large-scale datasets from Snapchat and FourSquare, and find that the model can outperform baselines by 14.94% accuracy. We confirm that the model can (1) generalize to unseen users from different areas and times, and (2) fall back on collective trends in the cold-start scenario. We also study the relative contributions of various factors in making the predictions and find that the users' visitation preferences and most-recent visitation sequences play more important roles than time contexts, same-hour sequences, and social influence features.
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预测大型社交平台中未来位置类别的用户
了解用户访问各种位置类别的模式可以帮助在线平台提高内容个性化和用户体验。目前关于预测用户未来位置类别的文献通常使用可以追溯到用户的特征,例如空间地理坐标和人口统计身份。此外,现有方法通常存在冷启动和泛化问题,并且通常不能指定用户何时访问预测的位置类别。在大型社交平台中,希望预测模型能够避免使用用户可识别的数据,推广到未见过的和新的用户,并能够对未来的特定时间进行预测。在这项工作中,我们使用Snapchat的数据构建了一个神经模型LocHabits。该模型省略了用户可识别的输入,利用Snapchat用户及其朋友位置类别历史中的时间和顺序规律,预测用户未来一小时的位置类别。我们在Snapchat和FourSquare的几个真实的大规模数据集上评估了我们的模型,发现该模型的准确率比基线高出14.94%。我们确认该模型可以(1)推广到来自不同地区和时间的未见过的用户,以及(2)在冷启动场景中回归到集体趋势。我们还研究了各种因素在预测中的相对贡献,发现用户的访问偏好和最近访问序列比时间背景、同一小时序列和社会影响特征发挥更重要的作用。
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