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UniST: A Prompt-Empowered Universal Model for Urban Spatio-Temporal Prediction (2402.11838v5)

Published 19 Feb 2024 in cs.LG

Abstract: Urban spatio-temporal prediction is crucial for informed decision-making, such as traffic management, resource optimization, and emergence response. Despite remarkable breakthroughs in pretrained natural LLMs that enable one model to handle diverse tasks, a universal solution for spatio-temporal prediction remains challenging Existing prediction approaches are typically tailored for specific spatio-temporal scenarios, requiring task-specific model designs and extensive domain-specific training data. In this study, we introduce UniST, a universal model designed for general urban spatio-temporal prediction across a wide range of scenarios. Inspired by LLMs, UniST achieves success through: (i) utilizing diverse spatio-temporal data from different scenarios, (ii) effective pre-training to capture complex spatio-temporal dynamics, (iii) knowledge-guided prompts to enhance generalization capabilities. These designs together unlock the potential of building a universal model for various scenarios Extensive experiments on more than 20 spatio-temporal scenarios demonstrate UniST's efficacy in advancing state-of-the-art performance, especially in few-shot and zero-shot prediction. The datasets and code implementation are released on https://github.com/tsinghua-fib-lab/UniST.

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Authors (5)
  1. Yuan Yuan (234 papers)
  2. Jingtao Ding (50 papers)
  3. Jie Feng (104 papers)
  4. Depeng Jin (72 papers)
  5. Yong Li (630 papers)
Citations (26)

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