TL;DR
TrajGPT is a transformer-based model that generates controlled, spatiotemporally consistent synthetic trajectories by filling gaps in visit sequences, outperforming existing methods in accuracy and realism.
Contribution
We propose TrajGPT, a novel multitask transformer model that jointly models space and time for controlled trajectory generation, addressing limitations of prior approaches.
Findings
Achieves 26-fold improvement in temporal accuracy.
Retains over 98% spatial accuracy.
Outperforms existing models in next-location prediction.
Abstract
Human mobility modeling from GPS-trajectories and synthetic trajectory generation are crucial for various applications, such as urban planning, disaster management and epidemiology. Both of these tasks often require filling gaps in a partially specified sequence of visits - a new problem that we call "controlled" synthetic trajectory generation. Existing methods for next-location prediction or synthetic trajectory generation cannot solve this problem as they lack the mechanisms needed to constrain the generated sequences of visits. Moreover, existing approaches (1) frequently treat space and time as independent factors, an assumption that fails to hold true in real-world scenarios, and (2) suffer from challenges in accuracy of temporal prediction as they fail to deal with mixed distributions and the inter-relationships of different modes with latent variables (e.g., day-of-the-week).…
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