PBEM:基于模式的用户位置类别预测嵌入模型

Yingying Duan, W. Lu, Weiwei Xing, Peng Bao, Xiang Wei
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引用次数: 2

摘要

随着移动设备的快速普及,大量基于轨迹的签到数据在许多社交网络应用中被共享,这是用户位置预测的重要数据源。位置类别预测是位置预测的一个分支,在城市规划、广告和推荐系统等广泛的领域都是一项至关重要的任务。在本文中,我们提出了一种新的基于两步模式的嵌入模型(PBEM)来预测用户将去的下一个位置类别。基于观察到一些用户经常以相似模式行为,定义了一个称为用户集群标签的新特性。为了挖掘用户的行为模式并提取聚类标签,提出并实现了一种类别重要性衰减学习策略,该策略为评估每个类别的重要性提供了一个定量的标准。从而得到一个包含用户、时间、历史位置类别、文本内容、用户聚类标签的综合特征集,大大增强了数据表示的鲁棒性,包含了更多的知识。然后将提取的特征集以统一的框架输入到递归神经网络(RNN)中,提高了预测精度。我们在两个基于实际轨迹的签入数据集上评估了PBEM的性能。实验结果表明,该模型的性能优于现有的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PBEM: A Pattern-Based Embedding Model for User Location Category Prediction
With the rapid popularity of mobile devices, a vast amount of trajectory-based check-in data are shared in many social network applications, which is an important data source for user location prediction. The location category prediction, a branch of location prediction, is a vital task in a wide range of areas, including urban planning, advertising and recommendation systems. In this paper, we propose a novel two-step Pattern-Based Embedding Model (PBEM) for predicting the next location category that user will go to. Based on the observation that some users behave frequently in a similarity pattern, a new feature termed as user cluster label is defined. In order to mine user's behavior patterns and extract the cluster label, a Category-Importance-Decay learning strategy is proposed and implemented, which provides a quantitative standard for evaluating the importance of each category. Thus, a comprehensive feature set is obtained including user, time, historical location category, text content, and user cluster label, which greatly enhances the robustness of data representation and contains more knowledge. Then the extracted feature set is fed into Recurrent Neural Network (RNN) in a unified framework, which improves the prediction accuracy. We evaluate the performance of PBEM on two real-life trajectory-based check-in datasets. Experimental results demonstrate that the proposed model can outperform the state-of-the-art methods.
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