Overcoming Failures of Imagination in AI Infused System Development and Deployment

11/26/2020
by   Margarita Boyarskaya, et al.
0

NeurIPS 2020 requested that research paper submissions include impact statements on "potential nefarious uses and the consequences of failure." However, as researchers, practitioners and system designers, a key challenge to anticipating risks is overcoming what Clarke (1962) called 'failures of imagination.' The growing research on bias, fairness, and transparency in computational systems aims to illuminate and mitigate harms, and could thus help inform reflections on possible negative impacts of particular pieces of technical work. The prevalent notion of computational harms – narrowly construed as either allocational or representational harms – does not fully capture the open, context dependent, and unobservable nature of harms across the wide range of AI infused systems.The current literature focuses on a small range of examples of harms to motivate algorithmic fixes, overlooking the wider scope of probable harms and the way these harms might affect different stakeholders. The system affordances may also exacerbate harms in unpredictable ways, as they determine stakeholders' control(including of non-users) over how they use and interact with a system output. To effectively assist in anticipating harmful uses, we argue that frameworks of harms must be context-aware and consider a wider range of potential stakeholders, system affordances, as well as viable proxies for assessing harms in the widest sense.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/11/2021

Unpacking the Expressed Consequences of AI Research in Broader Impact Statements

The computer science research community and the broader public have beco...
research
12/14/2022

Tensions Between the Proxies of Human Values in AI

Motivated by mitigating potentially harmful impacts of technologies, the...
research
08/28/2023

AI Deception: A Survey of Examples, Risks, and Potential Solutions

This paper argues that a range of current AI systems have learned how to...
research
03/20/2023

Dynamic Documentation for AI Systems

AI documentation is a rapidly-growing channel for coordinating the desig...
research
02/20/2023

Harms from Increasingly Agentic Algorithmic Systems

Research in Fairness, Accountability, Transparency, and Ethics (FATE) ha...
research
11/08/2019

AI Ethics for Systemic Issues: A Structural Approach

The debate on AI ethics largely focuses on technical improvements and st...
research
10/30/2018

On tit for tat: Franceschini and Maisano versus ANVUR regarding the Italian research assessment exercise VQR 2011-2014

The response by Benedetto, Checchi, Graziosi & Malgarini (2017) (hereaft...

Please sign up or login with your details

Forgot password? Click here to reset