Geo-Llama: Leveraging LLMs for Human Mobility Trajectory Generation with Spatiotemporal Constraints
Siyu Li, Toan Tran, Haowen Lin, John Krumm, Cyrus Shahabi, Lingyi, Zhao, Khurram Shafique, Li Xiong

TL;DR
Geo-Llama is a novel LLM fine-tuning framework that generates realistic human mobility trajectories with multiple spatiotemporal constraints, addressing previous models' stability and control limitations.
Contribution
It introduces a new controlled trajectory generation method using LLMs with a visit-wise permutation strategy for better constraint handling.
Findings
Outperforms existing models in realism and constraint adherence
Demonstrates robustness across real-world and synthetic datasets
Maintains contextual coherence in generated trajectories
Abstract
Generating realistic human mobility data is essential for various application domains, including transportation, urban planning, and epidemic control, as real data is often inaccessible to researchers due to high costs and privacy concerns. Existing deep generative models learn from real trajectories to generate synthetic ones. Despite the progress, most of them suffer from training stability issues and scale poorly with increasing data size. More importantly, they often lack control mechanisms to guide the generated trajectories under constraints such as enforcing specific visits. To address these limitations, we formally define the controlled trajectory generation problem for effectively handling multiple spatiotemporal constraints. We introduce Geo-Llama, a novel LLM finetuning framework that can enforce multiple explicit visit constraints while maintaining contextual coherence of…
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Taxonomy
TopicsTransportation and Mobility Innovations · Human Mobility and Location-Based Analysis · Autonomous Vehicle Technology and Safety
