Evolution of Lane-Changing Behavior in Mixed Traffic: A Quantum Game Theory Approach
Sungyong Chung, Tina Radvand, Alireza Talebpour

TL;DR
This paper introduces a Quantum Game Theory framework to better model and predict human lane-changing behavior in mixed traffic with automated vehicles, addressing limitations of classical models.
Contribution
It develops a quantum game model incorporating human driver correlations, validated with real data, to improve predictions of lane-changing interactions in mixed traffic.
Findings
Quantum model accurately reproduces observed 42% cooperation rate.
Entanglement parameter of ~0.52 matches real-world data.
AV deployment strategies influence human cooperation levels.
Abstract
As automated vehicles (AVs) enter mixed traffic, proactively anticipating the evolution of human driving behavior during critical interactions, such as lane changes, is essential. However, classical Evolutionary Game Theory (EGT) fails to capture the complexity of human decision-making during lane changes. Specifically, by strictly assuming independence between agents, classical models calibrated on empirical payoffs predict a convergence to unrealistic full cooperation, contradicting the stable 42% cooperation rate observed in real-world data. To resolve this discrepancy, this study introduces a Quantum Game Theory (QGT) framework. We analyze 7,636 lane-changing interactions from the Waymo Open Motion Dataset (WOMD) to derive empirical payoff matrices via a Quantal Response Equilibrium (QRE) model. Utilizing the Marinatto-Weber (MW) quantization scheme, we introduce an entanglement…
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