Published July 26, 2024 | Version v1
Conference proceeding Open

Introducing a Multi-Perspective xAI Tool for Better Model Explainability [preprint]

Description

This paper introduces an innovative tool equipped with a multi-perspective, user-friendly dashboard designed to enhance the explainability of AI models, particularly in cybersecurity. By enabling users to select data samples and apply various xAI methods, the tool provides insightful views into the decision- making processes of AI systems. These methods offer diverse perspectives and deepen the understanding of how models derive their conclusions, thus demystifying the ”black box” of AI. The tool’s architecture facilitates easy integration with existing ML models, making it accessible to users regardless of their technical expertise. This approach promotes transparency and fosters trust in AI applications by aligning decision-making with domain knowledge and mitigating potential biases.

---

Disclaimer:

This is a preprint version of the article.

The content here is for view-only purposes. This is not the final published version and may differ from the version of record.

Please refer to the official version for citation and authoritative use.

Files

ZENODO_Introducing_a_Multi_Perspective_xAI_Tool_for_Better_Model_Explainability.pdf

Additional details

Funding

European Commission
AI4CYBER - Trustworthy Artificial Intelligence for Cybersecurity Reinforcement and System Resilience 101070450

Dates

Available
2024-07-26