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Main Authors: Shao, Chenyang, Xu, Fengli, Fan, Bingbing, Ding, Jingtao, Yuan, Yuan, Wang, Meng, Li, Yong
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2402.09836
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author Shao, Chenyang
Xu, Fengli
Fan, Bingbing
Ding, Jingtao
Yuan, Yuan
Wang, Meng
Li, Yong
author_facet Shao, Chenyang
Xu, Fengli
Fan, Bingbing
Ding, Jingtao
Yuan, Yuan
Wang, Meng
Li, Yong
contents The powerful reasoning capabilities of large language models (LLMs) have brought revolutionary changes to many fields, but their performance in human behaviour generation has not yet been extensively explored. This gap likely emerges because the internal processes governing behavioral intentions cannot be solely explained by abstract reasoning. Instead, they are also influenced by a multitude of factors, including social norms and personal preference. Inspired by the Theory of Planned Behaviour (TPB), we develop a LLM workflow named Chain-of-Planned Behaviour (CoPB) for mobility behaviour generation, which reflects the important spatio-temporal dynamics of human activities. Through exploiting the cognitive structures of attitude, subjective norms, and perceived behaviour control in TPB, CoPB significantly enhance the ability of LLMs to reason the intention of next movement. Specifically, CoPB substantially reduces the error rate of mobility intention generation from 57.8% to 19.4%. To improve the scalability of the proposed CoPB workflow, we further explore the synergy between LLMs and mechanistic models. We find mechanistic mobility models, such as gravity model, can effectively map mobility intentions to physical mobility behaviours. The strategy of integrating CoPB with gravity model can reduce the token cost by 97.7% and achieve better performance simultaneously. Besides, the proposed CoPB workflow can facilitate GPT-4-turbo to automatically generate high quality labels for mobility behavior reasoning. We show such labels can be leveraged to fine-tune the smaller-scale, open source LLaMA 3-8B, which significantly reduces usage costs without sacrificing the quality of the generated behaviours.
format Preprint
id arxiv_https___arxiv_org_abs_2402_09836
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Chain-of-Planned-Behaviour Workflow Elicits Few-Shot Mobility Generation in LLMs
Shao, Chenyang
Xu, Fengli
Fan, Bingbing
Ding, Jingtao
Yuan, Yuan
Wang, Meng
Li, Yong
Artificial Intelligence
The powerful reasoning capabilities of large language models (LLMs) have brought revolutionary changes to many fields, but their performance in human behaviour generation has not yet been extensively explored. This gap likely emerges because the internal processes governing behavioral intentions cannot be solely explained by abstract reasoning. Instead, they are also influenced by a multitude of factors, including social norms and personal preference. Inspired by the Theory of Planned Behaviour (TPB), we develop a LLM workflow named Chain-of-Planned Behaviour (CoPB) for mobility behaviour generation, which reflects the important spatio-temporal dynamics of human activities. Through exploiting the cognitive structures of attitude, subjective norms, and perceived behaviour control in TPB, CoPB significantly enhance the ability of LLMs to reason the intention of next movement. Specifically, CoPB substantially reduces the error rate of mobility intention generation from 57.8% to 19.4%. To improve the scalability of the proposed CoPB workflow, we further explore the synergy between LLMs and mechanistic models. We find mechanistic mobility models, such as gravity model, can effectively map mobility intentions to physical mobility behaviours. The strategy of integrating CoPB with gravity model can reduce the token cost by 97.7% and achieve better performance simultaneously. Besides, the proposed CoPB workflow can facilitate GPT-4-turbo to automatically generate high quality labels for mobility behavior reasoning. We show such labels can be leveraged to fine-tune the smaller-scale, open source LLaMA 3-8B, which significantly reduces usage costs without sacrificing the quality of the generated behaviours.
title Chain-of-Planned-Behaviour Workflow Elicits Few-Shot Mobility Generation in LLMs
topic Artificial Intelligence
url https://arxiv.org/abs/2402.09836