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Explainability Auditing for Intelligent Systems: A Rationale for Multi-Disciplinary Perspectives | IEEE Conference Publication | IEEE Xplore

Explainability Auditing for Intelligent Systems: A Rationale for Multi-Disciplinary Perspectives


Abstract:

National and international guidelines for trustworthy artificial intelligence (AI) consider explainability to be a central facet of trustworthy systems. This paper outlin...Show More

Abstract:

National and international guidelines for trustworthy artificial intelligence (AI) consider explainability to be a central facet of trustworthy systems. This paper outlines a multi-disciplinary rationale for explainability auditing. Specifically, we propose that explainability auditing can ensure the quality of explainability of systems in applied contexts and can be the basis for certification as a means to communicate whether systems meet certain explainability standards and requirements. Moreover, we emphasize that explainability auditing needs to take a multi-disciplinary perspective, and we provide an overview of four perspectives (technical, psychological, ethical, legal) and their respective benefits with respect to explainability auditing.
Date of Conference: 20-24 September 2021
Date Added to IEEE Xplore: 27 October 2021
ISBN Information:
Conference Location: Notre Dame, IN, USA

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