Concrete Safety for ML Problems: System Safety for ML Development and Assessment

02/06/2023
by   Edgar W. Jatho, et al.
0

Many stakeholders struggle to make reliances on ML-driven systems due to the risk of harm these systems may cause. Concerns of trustworthiness, unintended social harms, and unacceptable social and ethical violations undermine the promise of ML advancements. Moreover, such risks in complex ML-driven systems present a special challenge as they are often difficult to foresee, arising over periods of time, across populations, and at scale. These risks often arise not from poor ML development decisions or low performance directly but rather emerge through the interactions amongst ML development choices, the context of model use, environmental factors, and the effects of a model on its target. Systems safety engineering is an established discipline with a proven track record of identifying and managing risks even in high-complexity sociotechnical systems. In this work, we apply a state-of-the-art systems safety approach to concrete applications of ML with notable social and ethical risks to demonstrate a systematic means for meeting the assurance requirements needed to argue for safe and trustworthy ML in sociotechnical systems.

READ FULL TEXT
research
11/08/2022

System Safety Engineering for Social and Ethical ML Risks: A Case Study

Governments, industry, and academia have undertaken efforts to identify ...
research
09/28/2021

Unsolved Problems in ML Safety

Machine learning (ML) systems are rapidly increasing in size, are acquir...
research
07/19/2023

Beyond the ML Model: Applying Safety Engineering Frameworks to Text-to-Image Development

Identifying potential social and ethical risks in emerging machine learn...
research
12/19/2022

Foveate, Attribute, and Rationalize: Towards Safe and Trustworthy AI

Users' physical safety is an increasing concern as the market for intell...
research
06/11/2022

Tensions and antagonistic interactions of risks and ethics of using robotics in long-term care

The dwindling informal care support structure for the older population a...
research
05/09/2022

Towards a multi-stakeholder value-based assessment framework for algorithmic systems

In an effort to regulate Machine Learning-driven (ML) systems, current a...
research
09/13/2020

Towards the Quantification of Safety Risks in Deep Neural Networks

Safety concerns on the deep neural networks (DNNs) have been raised when...

Please sign up or login with your details

Forgot password? Click here to reset