Explainable and secure artificial intelligence: taxonomy, cases of study, learned lessons, challenges and future directions
Khalid A. Eldrandaly, Mohamed Abdel‐Basset, Mahmoud Ibrahim, Nabil M. AbdelAziz
Abstract
Explainable artificial intelligence (XAI) is an evolving discipline that mainly emphasises unboxing in these Black-Boxes. This study provides in-depth review of XAI literature together with a new taxonomy of categorising XAI methods. Moreover, the security of Deep learning (DL) against different attacks turned to be a critical concern for both industry and academia. This study presents a taxonomic overview of the attacks on DL solutions and methods for securing DL against these attacks. Experiments are performed to evaluate and analyse the cutting-edge methods for explaining and securing DL models on real-world case studies of Twitter sentimental analysis using state-of-the-art DL models.