Efficient and Accurate Estimation of Lipschitz Constants for Hybrid Quantum-Classical Decision Models

Hashemian, Sajjad, Arvenaghi, Mohammad Saeed

arXiv.org Artificial Intelligence 

In this paper, we propose a novel framework for efficiently and accurately estimating Lipschitz constants in hybrid quantum-classical decision models. Our approach integrates classical neural network with quantum variational circuits to address critical issues in learning theory such as fairness verification, robust training, and generalization. By a unified convex optimization formulation, we extend existing classical methods to capture the interplay between classical and quantum layers. This integrated strategy not only provide a tight bound on the Lipschitz constant but also improves computational efficiency with respect to the previous methods.