A Foundational individual Mobility Prediction Model based on Open-Source Large Language Models
By: Zhenlin Qin , Leizhen Wang , Francisco Camara Pereira and more
Potential Business Impact:
Helps predict where people will go anywhere.
Large Language Models (LLMs) are widely applied to domain-specific tasks due to their massive general knowledge and remarkable inference capacities. Current studies on LLMs have shown immense potential in applying LLMs to model individual mobility prediction problems. However, most LLM-based mobility prediction models only train on specific datasets or use single well-designed prompts, leading to difficulty in adapting to different cities and users with diverse contexts. To fill these gaps, this paper proposes a unified fine-tuning framework to train a foundational open source LLM-based mobility prediction model. We conducted extensive experiments on six real-world mobility datasets to validate the proposed model. The results showed that the proposed model achieved the best performance in prediction accuracy and transferability over state-of-the-art models based on deep learning and LLMs.
Similar Papers
Large Foundation Models for Trajectory Prediction in Autonomous Driving: A Comprehensive Survey
Robotics
Helps self-driving cars predict where others will go.
Large Language Models and Their Applications in Roadway Safety and Mobility Enhancement: A Comprehensive Review
Artificial Intelligence
Helps cars understand traffic better for safer roads.
Learning Universal Human Mobility Patterns with a Foundation Model for Cross-domain Data Fusion
Machine Learning (CS)
Helps cities plan roads and traffic better.