Providing Assurance and Scrutability on Shared Data and Machine Learning Models with Verifiable Credentials

05/13/2021
by   Iain Barclay, et al.
0

Adopting shared data resources requires scientists to place trust in the originators of the data. When shared data is later used in the development of artificial intelligence (AI) systems or machine learning (ML) models, the trust lineage extends to the users of the system, typically practitioners in fields such as healthcare and finance. Practitioners rely on AI developers to have used relevant, trustworthy data, but may have limited insight and recourse. This paper introduces a software architecture and implementation of a system based on design patterns from the field of self-sovereign identity. Scientists can issue signed credentials attesting to qualities of their data resources. Data contributions to ML models are recorded in a bill of materials (BOM), which is stored with the model as a verifiable credential. The BOM provides a traceable record of the supply chain for an AI system, which facilitates on-going scrutiny of the qualities of the contributing components. The verified BOM, and its linkage to certified data qualities, is used in the AI Scrutineer, a web-based tool designed to offer practitioners insight into ML model constituents and highlight any problems with adopted datasets, should they be found to have biased data or be otherwise discredited.

READ FULL TEXT
research
11/20/2020

AI Governance for Businesses

Artificial Intelligence (AI) governance regulates the exercise of author...
research
04/08/2019

Towards Traceability in Data Ecosystems using a Bill of Materials Model

Researchers and scientists use aggregations of data from a diverse combi...
research
03/05/2021

A framework for fostering transparency in shared artificial intelligence models by increasing visibility of contributions

Increased adoption of artificial intelligence (AI) systems into scientif...
research
10/14/2019

Component Mismatches Are a Critical Bottleneck to Fielding AI-Enabled Systems in the Public Sector

The use of machine learning or artificial intelligence (ML/AI) holds sub...
research
07/08/2019

Quantifying Transparency of Machine Learning Systems through Analysis of Contributions

Increased adoption and deployment of machine learning (ML) models into b...
research
09/18/2020

Principles and Practice of Explainable Machine Learning

Artificial intelligence (AI) provides many opportunities to improve priv...
research
05/10/2023

Exploring the Landscape of Machine Unlearning: A Comprehensive Survey and Taxonomy

Machine unlearning (MU) is gaining increasing attention due to the need ...

Please sign up or login with your details

Forgot password? Click here to reset