Manifold-Aligned Counterfactual Explanations for Neural Networks
Georgia Perakis, Wei Sun, et al.
AISTATS 2024
Humble AI (Knowles et al., 2023) argues for cautiousness in AI development and deployments through scepticism (accounting for limitations of statistical learning), curiosity (accounting for unexpected outcomes), and commitment (accounting for multifaceted values beyond performance). We present a real-world case study for humble AI in the domain of algorithmic hiring. Specifically, we evaluate virtual screening algorithms in a widely used hiring platform that matches candidates to job openings. There are several challenges in misrecognition and stereotyping in such contexts that are difficult to assess through standard fairness and trust frameworks; e.g., someone with a non-traditional background is less likely to rank highly. We demonstrate technical feasibility of how humble AI principles can be translated to practice through uncertainty quantification of ranks, entropy estimates, and a user experience that highlights algorithmic unknowns. We describe preliminary discussions with focus groups made up of recruiters. Future user studies seek to evaluate whether the higher cognitive load of a humble AI system fosters a climate of trust in its outcomes.
Georgia Perakis, Wei Sun, et al.
AISTATS 2024
Ioana Baldini Soares, Chhavi Yadav, et al.
ACL 2023
Akifumi Wachi, Yanan Sui
ICML 2020
Omid Aramoon, Pin-Yu Chen, et al.
ICML 2020