cs.AI updates on arXiv.org 07月08日
BERT4Traj: Transformer Based Trajectory Reconstruction for Sparse Mobility Data
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本文提出BERT4Traj模型,通过预测稀疏移动序列中的隐藏访问,重建完整的人类移动轨迹,在乌干达的真实数据集上显著优于传统模型,有效增强了对人类移动模式的理解。

arXiv:2507.03062v1 Announce Type: cross Abstract: Understanding human mobility is essential for applications in public health, transportation, and urban planning. However, mobility data often suffers from sparsity due to limitations in data collection methods, such as infrequent GPS sampling or call detail record (CDR) data that only capture locations during communication events. To address this challenge, we propose BERT4Traj, a transformer based model that reconstructs complete mobility trajectories by predicting hidden visits in sparse movement sequences. Inspired by BERT's masked language modeling objective and self_attention mechanisms, BERT4Traj leverages spatial embeddings, temporal embeddings, and contextual background features such as demographics and anchor points. We evaluate BERT4Traj on real world CDR and GPS datasets collected in Kampala, Uganda, demonstrating that our approach significantly outperforms traditional models such as Markov Chains, KNN, RNNs, and LSTMs. Our results show that BERT4Traj effectively reconstructs detailed and continuous mobility trajectories, enhancing insights into human movement patterns.

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BERT4Traj 移动轨迹重建 稀疏数据 人类移动模式
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