Fair collaborative vehicle routing: A deep multi-agent reinforcement learning approach

强化学习 计算机科学 车辆路径问题 功能(生物学) 夏普里值 利润(经济学) 布线(电子设计自动化) 数学优化 博弈论 运筹学 计算机网络 人工智能 微观经济学 经济 工程类 数学 进化生物学 生物
作者
Stephen Mak,Liming Xu,Tim Pearce,Michael Ostroumov,Alexandra Brintrup
出处
期刊:Transportation Research Part C-emerging Technologies [Elsevier BV]
卷期号:157: 104376-104376 被引量:12
标识
DOI:10.1016/j.trc.2023.104376
摘要

Collaborative vehicle routing occurs when carriers collaborate through sharing their transportation requests and performing transportation requests on behalf of each other. This achieves economies of scale, thus reducing cost, greenhouse gas emissions and road congestion. But which carrier should partner with whom, and how much should each carrier be compensated? Traditional game theoretic solution concepts are expensive to calculate as the characteristic function scales exponentially with the number of agents. This would require solving the vehicle routing problem (NP-hard) an exponential number of times. We therefore propose to model this problem as a coalitional bargaining game solved using deep multi-agent reinforcement learning, where - crucially - agents are not given access to the characteristic function. Instead, we implicitly reason about the characteristic function; thus, when deployed in production, we only need to evaluate the expensive post-collaboration vehicle routing problem once. Our contribution is that we are the first to consider both the route allocation problem and gain sharing problem simultaneously - without access to the expensive characteristic function. Through decentralised machine learning, our agents bargain with each other and agree to outcomes that correlate well with the Shapley value - a fair profit allocation mechanism. Importantly, we are able to achieve a reduction in run-time of 88%.
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