Frameworks For Improving AI Explainability Using Accountability Through Regulation and Design

21 Pages Posted: 21 Oct 2020

See all articles by Arsh Shah

Arsh Shah

Sydney Law School; Lake Forest College - Department of Economics

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

Suggested Citation

Shah, Arsh, Frameworks For Improving AI Explainability Using Accountability Through Regulation and Design (May 27, 2020). Available at SSRN: https://ssrn.com/abstract=3617349 or http://dx.doi.org/10.2139/ssrn.3617349

Arsh Shah (Contact Author)

Sydney Law School ( email )

Faculty of Law Building, F10
Sydney, NSW
Australia

Lake Forest College - Department of Economics ( email )

555 N. Sheridan Road
Lake Forest, IL 60045
United States

Do you have negative results from your research you’d like to share?

Paper statistics

Downloads
171
Abstract Views
599
Rank
318,603
PlumX Metrics