FitLight: Federated Imitation Learning for Plug-and-Play Autonomous Traffic Signal Control
Yutong Ye, Yingbo Zhou, Zhusen Liu, Xiao Du, Hao Zhou, Xiang Lian and, Mingsong Chen

TL;DR
FitLight introduces a federated imitation learning framework for traffic signal control that enables plug-and-play deployment, rapid policy learning, and resource-efficient operation across diverse traffic environments.
Contribution
The paper presents a novel federated imitation learning approach with real-time adaptation and resource-efficient design for multi-intersection traffic signal control.
Findings
Outperforms state-of-the-art methods in convergence speed and final policy quality.
Operates effectively on micro-controllers with minimal memory.
Demonstrates superior results on real-world and synthetic datasets.
Abstract
Although Reinforcement Learning (RL)-based Traffic Signal Control (TSC) methods have been extensively studied, their practical applications still raise some serious issues such as high learning cost and poor generalizability. This is because the ``trial-and-error'' training style makes RL agents extremely dependent on the specific traffic environment, which also requires a long convergence time. To address these issues, we propose a novel Federated Imitation Learning (FIL)-based framework for multi-intersection TSC, named FitLight, which allows RL agents to plug-and-play for any traffic environment without additional pre-training cost. Unlike existing imitation learning approaches that rely on pre-training RL agents with demonstrations, FitLight allows real-time imitation learning and seamless transition to reinforcement learning. Due to our proposed knowledge-sharing mechanism and…
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Taxonomy
TopicsTraffic Prediction and Management Techniques · Internet Traffic Analysis and Secure E-voting · Traffic control and management
MethodsPruning
