Fostering the Ecosystem of AI for Social Impact Requires Expanding and Strengthening Evaluation Standards
By: Bryan Wilder, Angela Zhou
Potential Business Impact:
Helps AI help people without needing to be perfect.
There has been increasing research interest in AI/ML for social impact, and correspondingly more publication venues have refined review criteria for practice-driven AI/ML research. However, these review guidelines tend to most concretely recognize projects that simultaneously achieve deployment and novel ML methodological innovation. We argue that this introduces incentives for researchers that undermine the sustainability of a broader research ecosystem of social impact, which benefits from projects that make contributions on single front (applied or methodological) that may better meet project partner needs. Our position is that researchers and reviewers in machine learning for social impact must simultaneously adopt: 1) a more expansive conception of social impacts beyond deployment and 2) more rigorous evaluations of the impact of deployed systems.
Similar Papers
Who Evaluates AI's Social Impacts? Mapping Coverage and Gaps in First and Third Party Evaluations
Computers and Society
Helps check AI for fairness and harm.
On the Societal Impact of Machine Learning
Machine Learning (CS)
Makes AI fairer and less discriminatory.
AI for Scientific Discovery is a Social Problem
Machine Learning (CS)
AI helps scientists work together better for faster discoveries.