Stochastic Real-Time Deception in Nash Equilibrium Seeking for Games with Quadratic Payoffs

Abstract

In multi-agent autonomous systems, deception is a fundamental concept which characterizes the exploitation of unbalanced information to mislead victims into choosing oblivious actions. This effectively alters the system’s long term behavior, leading to outcomes that may be beneficial to the deceiver but detrimental to victim. We study this phenomenon for a class of model-free Nash equilibrium seeking (NES) where players implement independent stochastic exploration signals to learn the pseudogradient flow. In particular, we show that deceptive players who obtain real- time measurements of other players’ stochastic perturbation can incorporate this information into their own NES action update, consequentially steering the overall dynamics to a new operating point that could potentially improve the payoffs of the deceptive players. We consider games with quadratic payoff functions, as this restriction allows us to derive a more explicit formulation of the capabilities of the deceptive players. By leveraging results on multi-input stochastic averaging for dynamical systems, we establish local exponential (in probability) convergence for the proposed deceptive NES dynamics. To illustrate our results, we apply them to a two player quadratic game.

Cite

Text

Tang et al. "Stochastic Real-Time Deception in Nash Equilibrium Seeking for Games with Quadratic Payoffs." Proceedings of the 7th Annual Learning for Dynamics \& Control Conference, 2025.

Markdown

[Tang et al. "Stochastic Real-Time Deception in Nash Equilibrium Seeking for Games with Quadratic Payoffs." Proceedings of the 7th Annual Learning for Dynamics \& Control Conference, 2025.](https://mlanthology.org/l4dc/2025/tang2025l4dc-stochastic/)

BibTeX

@inproceedings{tang2025l4dc-stochastic,
  title     = {{Stochastic Real-Time Deception in Nash Equilibrium Seeking for Games with Quadratic Payoffs}},
  author    = {Tang, Michael and Krstic, Miroslav and Poveda, Jorge},
  booktitle = {Proceedings of the 7th Annual Learning for Dynamics \& Control Conference},
  year      = {2025},
  pages     = {635-646},
  volume    = {283},
  url       = {https://mlanthology.org/l4dc/2025/tang2025l4dc-stochastic/}
}