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Stability Via Adversarial Training of Neural Network Stochastic Control of Mean-Field Type

Authors :
Barreiro-Gomez, Julian
Choutri, Salah Eddine
Djehiche, Boualem
Publication Year :
2022

Abstract

In this paper, we present an approach to neural network mean-field-type control and its stochastic stability analysis by means of adversarial inputs (aka adversarial attacks). This is a class of data-driven mean-field-type control where the distribution of the variables such as the system states and control inputs are incorporated into the problem. Besides, we present a methodology to validate the feasibility of the approximations of the solutions via neural networks and evaluate their stability. Moreover, we enhance the stability by enlarging the training set with adversarial inputs to obtain a more robust neural network. Finally, a worked-out example based on the linear-quadratic mean-field type control problem (LQ-MTC) is presented to illustrate our methodology.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2210.00874
Document Type :
Working Paper