Reliability assessment of variational quantum neural networks under noise models and error-mitigation strategies in the NISQ regime | Synapse
March 3, 2026
Reliability assessment of variational quantum neural networks under noise models and error-mitigation strategies in the NISQ regime
Puntos clave
The assessment reveals that noise can significantly affect variational quantum neural networks' reliability, especially in the NISQ regime.
Key evidence indicates that specific error-mitigation strategies can improve performance metrics, with significant variability observed across different noise models.
The method involves analyzing several noise models to evaluate the reliability of different quantum neural network configurations within the NISQ framework.
This analysis highlights the need for robust error-mitigation techniques to enhance quantum computation, with implications for future research and applications.