Tree-Based Stochastic Optimization for Solving Large-Scale Urban Network Security Games
Shuxin Zhuang, Linjian Meng, Shuxin Li, Minming Li, Youzhi Zhang

TL;DR
This paper introduces Tree-based Stochastic Optimization (TSO), a novel framework for efficiently approximating Nash Equilibria in large-scale Urban Network Security Games by leveraging tree-structured action representations.
Contribution
TSO bridges stochastic optimization and large-scale UNSGs using tree-based action representation and a sample-and-prune mechanism, improving NE approximation accuracy.
Findings
TSO outperforms baseline algorithms in large-scale UNSGs.
Tree-based representation effectively handles vast action spaces.
Sample-and-prune enhances convergence to better solutions.
Abstract
Urban Network Security Games (UNSGs), which model the strategic allocation of limited security resources on city road networks, are critical for urban safety. However, finding a Nash Equilibrium (NE) in large-scale UNSGs is challenging due to their massive and combinatorial action spaces. One common approach to addressing these games is the Policy-Space Response Oracle (PSRO) framework, which requires computing best responses (BR) at each iteration. However, precisely computing exact BRs is impractical in large-scale games, and employing reinforcement learning to approximate BRs inevitably introduces errors, which limits the overall effectiveness of the PSRO methods. Recent advancements in leveraging non-convex stochastic optimization to approximate an NE offer a promising alternative to the burdensome BR computation. However, utilizing existing stochastic optimization techniques with…
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Taxonomy
TopicsInfrastructure Resilience and Vulnerability Analysis · Software-Defined Networks and 5G · Reinforcement Learning in Robotics
