Sparsity is a common issue in many trajectory datasets, including human mobility data. This issue frequently brings more difficulty to relevant learning tasks, such as trajectory imputation and prediction. Nowadays, little existing work simultaneously deals with imputation and prediction on human trajectories. This work plans to explore whether the learning process of imputation and prediction could benefit from each other to achieve better outcomes. And the question will be answered by studying the coexistence patterns between missing points and observed ones in incomplete trajectories. More specifically, the proposed model develops an imputation component based on the self-attention mechanism to capture the coexistence patterns between observations and missing points among encoder-decoder layers. Meanwhile, a recurrent unit is integrated to extract the sequential embeddings from newly imputed sequences for predicting the following location. Furthermore, a new implementation called Imputation Cycle is introduced to enable gradual imputation with prediction enhancement at multiple levels, which helps to accelerate the speed of convergence. The experimental results on three different real-world mobility datasets show that the proposed approach has significant advantages over the competitive baselines across both imputation and prediction tasks in terms of accuracy and stability.
翻译:在包括人类流动数据在内的许多轨迹数据集中,差异是一个常见的问题。这个问题经常给相关的学习任务带来更多的困难,例如轨迹估算和预测。现在,现有很少的工作同时涉及人类轨迹的估算和预测。这个工作计划旨在探讨估算和预测的学习过程是否彼此受益,以取得更好的结果。这个问题将通过研究缺失点和观察到的轨道不完全的点之间的共存模式来解决。更具体地说,拟议的模型根据自我注意机制开发了一种预测部分,以捕捉编码脱coder-解码层之间观测和缺点之间的共存模式。同时,一个经常性单元被整合到从新估算的序列中提取顺序嵌入的序列以预测下一个地点。此外,还引入了一个新的称为“光学循环”的实施,以便通过多层次的预测增强逐步估算,从而有助于加速趋同速度。三种不同的真实移动数据集的实验结果显示,拟议的方法在精确性和预测任务方面的竞争性基线上都具有相当大的优势。