AttackBench is a unified framework that enables a fair and comprehensive evaluation of gradient-based adversarial attacks against machine learning models. It provides a categorization of existing attacks, introduces a novel optimality metric to rank their performance, and highlights implementation issues that prevent many attacks from finding better solutions.
A novel methodology that combines SHAP-based feature importance analysis with an optimal epsilon technique to generate highly effective and precise adversarial samples that can evade machine learning models.