Litcius/Paper detail

Enabling Explainable AI in Cybersecurity Solutions

Imdad Ali Shah, N. Z. Jhanjhi, Sayan Kumar Ray

2024Advances in computational intelligence and robotics book series17 citationsDOI

Abstract

The public needs to be able to understand and accept AI's decision-making if it is to acquire their trust. A compelling justification can outline the reasoning behind a choice in terms that the person hearing it will find “comfortable.” A suitable level of complexity is present in the explanation's combination of facts. As AI becomes increasingly complex, humans find it challenging to comprehend and track the algorithm's actions. These “black box” models are built purely from this information. It might be required to meet regulatory standards, or it might be crucial to provide people impacted by a decision the opportunity to contest. With explainable AI, a company may increase model performance and solve issues while assisting stakeholders in comprehending the actions of AI models. Evaluation of the model is sped up by displaying both positive and negative values in the model's behaviour and using data to generate an explanation.

Topics & Concepts

CONTESTComputer scienceBlack boxComputer securityArtificial intelligenceData scienceManagement scienceEngineeringPolitical scienceLawExplainable Artificial Intelligence (XAI)Adversarial Robustness in Machine LearningEthics and Social Impacts of AI
Enabling Explainable AI in Cybersecurity Solutions | Litcius