Department of Computer Engineering and Computational Sciences
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Browsing Department of Computer Engineering and Computational Sciences by Subject "adversarial training"
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Item Data-driven stability of stochastic mean-field type games via noncooperative neural network adversarial training(John Wiley and Sons Inc, 2024-03) Barreiro-Gomez, Julian; Choutri, Salah E.We propose an approach to neural network stochastic differential games of mean-field type and its corresponding stochastic stability analysis by means of adversarial training (aka adversarial attacks). This is a class of data-driven differential games where the distribution of the variables such as the system states and the decision-makers' strategies (control inputs) is incorporated into the problem. This work casts the cooperative/noncooperative game terminology into the deep learning framework where we talk about cooperative and noncooperative neural network computations that involve learning capabilities and neural network architectures. We suggest a method to computationally validate the feasibility of the approximated solutions via neural networks and evaluate the stochastic stability of the associated closed-loop system (state feedback Nash). Moreover, we enhance the stochastic stability by enlarging the training set with adversarial initial states to obtain a more robust neural network for a particular decision-maker. Finally, a worked-out example based on the linear-quadratic mean-field type game (LQ-MTG) that illustrates our methodology is presented. © 2023 Chinese Automatic Control Society and John Wiley & Sons Australia, Ltd.