Harnessing LLMs for Cross-City OD Flow Prediction

Chenyang Yu, Xinpeng Xie, Yan Huang, Chenxi Qiu
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Abstract

Understanding and predicting Origin-Destination (OD) flows is crucial for urban planning and transportation management. Traditional OD prediction models, while effective within single cities, often face limitations when applied across different cities due to varied traffic conditions, urban layouts, and socio-economic factors. In this paper, by employing Large Language Models (LLMs), we introduce a new method for cross-city OD flow prediction. Our approach leverages the advanced semantic understanding and contextual learning capabilities of LLMs to bridge the gap between cities with different characteristics, providing a robust and adaptable solution for accurate OD flow prediction that can be transferred from one city to another. Our novel framework involves four major components: collecting OD training datasets from a source city, instruction-tuning the LLMs, predicting destination POIs in a target city, and identifying the locations that best match the predicted destination POIs. We introduce a new loss function that integrates POI semantics and trip distance during training. By extracting high-quality semantic features from human mobility and POI data, the model understands spatial and functional relationships within urban spaces and captures interactions between individuals and various POIs. Extensive experimental results demonstrate the superiority of our approach over the state-of-the-art learning-based methods in cross-city OD flow prediction.
利用 LLM 进行跨城市外径流量预测
了解和预测始发站-目的地(OD)流量对于城市规划和交通管理至关重要。传统的出发地-目的地预测模型虽然在单个城市内有效,但由于交通状况、城市布局和社会经济因素的不同,在跨城市应用时往往面临局限性。本文采用大型语言模型(LLM),介绍了一种新的跨城市 OD 流量预测方法。我们的方法利用大型语言模型先进的语义理解和上下文学习能力,在具有不同特征的城市之间架起了一座桥梁,为准确的 OD 流量预测提供了一个稳健且适应性强的解决方案,并可从一个城市转移到另一个城市。我们新颖的框架包括四个主要部分:从源城市收集 OD 训练数据集、指导调整 LLM、预测目标城市的目的地 POI,以及识别与预测的目的地 POI 最匹配的地点。我们引入了一个新的损失函数,该函数在训练过程中将 POI 语义和行程距离整合在一起。通过从人类移动和 POI 数据中提取高质量语义特征,该模型能够理解城市空间内的空间和功能关系,并捕捉个人与各种 POI 之间的互动。广泛的实验结果表明,在跨城市 OD 流量预测方面,我们的方法优于最先进的基于学习的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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