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Main Authors: Zhang, Yi, Long, Yushen, Ni, Yun, Huang, Liping, Wang, Xiaohong, Liu, Jun
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.10644
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author Zhang, Yi
Long, Yushen
Ni, Yun
Huang, Liping
Wang, Xiaohong
Liu, Jun
author_facet Zhang, Yi
Long, Yushen
Ni, Yun
Huang, Liping
Wang, Xiaohong
Liu, Jun
contents Online ride-hailing platforms aim to deliver efficient mobility-on-demand services, often facing challenges in balancing dynamic and spatially heterogeneous supply and demand. Existing methods typically fall into two categories: reinforcement learning (RL) approaches, which suffer from data inefficiency, oversimplified modeling of real-world dynamics, and difficulty enforcing operational constraints; or decomposed online optimization methods, which rely on manually designed high-level objectives that lack awareness of low-level routing dynamics. To address this issue, we propose a novel hybrid framework that integrates large language model (LLM) with mathematical optimization in a dynamic hierarchical system: (1) it is training-free, removing the need for large-scale interaction data as in RL, and (2) it leverages LLM to bridge cognitive limitations caused by problem decomposition by adaptively generating high-level objectives. Within this framework, LLM serves as a meta-optimizer, producing semantic heuristics that guide a low-level optimizer responsible for constraint enforcement and real-time decision execution. These heuristics are refined through a closed-loop evolutionary process, driven by harmony search, which iteratively adapts the LLM prompts based on feasibility and performance feedback from the optimization layer. Extensive experiments based on scenarios derived from both the New York and Chicago taxi datasets demonstrate the effectiveness of our approach, achieving an average improvement of 16% compared to state-of-the-art baselines.
format Preprint
id arxiv_https___arxiv_org_abs_2510_10644
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Hierarchical Optimization via LLM-Guided Objective Evolution for Mobility-on-Demand Systems
Zhang, Yi
Long, Yushen
Ni, Yun
Huang, Liping
Wang, Xiaohong
Liu, Jun
Artificial Intelligence
Online ride-hailing platforms aim to deliver efficient mobility-on-demand services, often facing challenges in balancing dynamic and spatially heterogeneous supply and demand. Existing methods typically fall into two categories: reinforcement learning (RL) approaches, which suffer from data inefficiency, oversimplified modeling of real-world dynamics, and difficulty enforcing operational constraints; or decomposed online optimization methods, which rely on manually designed high-level objectives that lack awareness of low-level routing dynamics. To address this issue, we propose a novel hybrid framework that integrates large language model (LLM) with mathematical optimization in a dynamic hierarchical system: (1) it is training-free, removing the need for large-scale interaction data as in RL, and (2) it leverages LLM to bridge cognitive limitations caused by problem decomposition by adaptively generating high-level objectives. Within this framework, LLM serves as a meta-optimizer, producing semantic heuristics that guide a low-level optimizer responsible for constraint enforcement and real-time decision execution. These heuristics are refined through a closed-loop evolutionary process, driven by harmony search, which iteratively adapts the LLM prompts based on feasibility and performance feedback from the optimization layer. Extensive experiments based on scenarios derived from both the New York and Chicago taxi datasets demonstrate the effectiveness of our approach, achieving an average improvement of 16% compared to state-of-the-art baselines.
title Hierarchical Optimization via LLM-Guided Objective Evolution for Mobility-on-Demand Systems
topic Artificial Intelligence
url https://arxiv.org/abs/2510.10644