Efficient Mitigation of Bus Bunching through Setter-Based Curriculum Learning
Avidan Shah, Danny Tran, Yuhan Tang

TL;DR
This paper introduces a novel setter-based curriculum learning approach to improve reinforcement learning efficiency in bus bunching mitigation by dynamically adjusting training difficulty through an adversary model.
Contribution
It proposes a new automated curriculum learning method using a Setter Model that dynamically generates training parameters, enhancing reinforcement learning for traffic optimization tasks.
Findings
Improved training efficiency in bus bunching scenarios
Dynamic curriculum adapts to agent learning progress
Enhanced reinforcement learning performance
Abstract
Curriculum learning has been growing in the domain of reinforcement learning as a method of improving training efficiency for various tasks. It involves modifying the difficulty (lessons) of the environment as the agent learns, in order to encourage more optimal agent behavior and higher reward states. However, most curriculum learning methods currently involve discrete transitions of the curriculum or predefined steps by the programmer or using automatic curriculum learning on only a small subset training such as only on an adversary. In this paper, we propose a novel approach to curriculum learning that uses a Setter Model to automatically generate an action space, adversary strength, initialization, and bunching strength. Transportation and traffic optimization is a well known area of study, especially for reinforcement learning based solutions. We specifically look at the bus…
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Taxonomy
TopicsElectric and Hybrid Vehicle Technologies
