55
0

Stackelberg Games with kk-Submodular Function under Distributional Risk-Receptiveness and Robustness

Main:30 Pages
7 Figures
Bibliography:5 Pages
7 Tables
Abstract

We study submodular optimization in adversarial context, applicable to machine learning problems such as feature selection using data susceptible to uncertainties and attacks. We focus on Stackelberg games between an attacker (or interdictor) and a defender where the attacker aims to minimize the defender's objective of maximizing a kk-submodular function. We allow uncertainties arising from the success of attacks and inherent data noise, and address challenges due to incomplete knowledge of the probability distribution of random parameters. Specifically, we introduce Distributionally Risk-Averse kk-Submodular Interdiction Problem (DRA kk-SIP) and Distributionally Risk-Receptive kk-Submodular Interdiction Problem (DRR kk-SIP) along with finitely convergent exact algorithms for solving them. The DRA kk-SIP solution allows risk-averse interdictor to develop robust strategies for real-world uncertainties. Conversely, DRR kk-SIP solution suggests aggressive tactics for attackers, willing to embrace (distributional) risk to inflict maximum damage, identifying critical vulnerable components, which can be used for the defender's defensive strategies. The optimal values derived from both DRA kk-SIP and DRR kk-SIP offer a confidence interval-like range for the expected value of the defender's objective function, capturing distributional ambiguity. We conduct computational experiments using instances of feature selection and sensor placement problems, and Wisconsin breast cancer data and synthetic data, respectively.

View on arXiv
@article{park2025_2406.13023,
  title={ $k$-Submodular Interdiction Problems under Distributional Risk-Receptiveness and Robustness: Application to Machine Learning },
  author={ Seonghun Park and Manish Bansal },
  journal={arXiv preprint arXiv:2406.13023},
  year={ 2025 }
}
Comments on this paper