Frameworks For Improving AI Explainability Using Accountability Through Regulation and Design
21 Pages Posted: 21 Oct 2020
Date Written: May 27, 2020
Abstract
This paper discusses frameworks for improving AI explainability regulations and frameworks, drawing on ethical AI design, self-regulation, blockchain solutions for auditing, and FAT (fairness, accountability and transparency) Forensics packages forked from Github. The work takes a look at approaches to AI in the GDPR, Chinese AI Standards, United States law, and domestic Australian Law (at both the State and Federal Levels).
Keywords: AI, explainability, transparency, accountability, FAT Forensics, Github, artificial intelligence, self-regulation, AI design, regulatory design, AI regulation, AI legislation, emerging technology
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