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Abstract
Current quantum machine learning approaches often face challenges balancing
predictive accuracy, robustness, and interpretability. To address this, we
propose a novel quantum adversarial framework that integrates a hybrid quantum
neural network (QNN) with classical deep learning layers, guided by an
evaluator model with LIME-based interpretability, and extended through quantum
GAN and self-supervised variants. In the proposed model, an adversarial
evaluator concurrently guides the QNN by computing feedback loss, thereby
optimizing both prediction accuracy and model explainability. Empirical
evaluations show that the Vanilla model achieves RMSE = 0.27, MSE = 0.071, MAE
= 0.21, and R^2 = 0.59, delivering the most consistent performance across
regression metrics compared to adversarial counterparts. These results
demonstrate the potential of combining quantum-inspired methods with classical
architectures to develop lightweight, high-performance, and interpretable
predictive models, advancing the applicability of QML beyond current
limitations.