English

A Case for Backward Compatibility for Human-AI Teams

Human-Computer Interaction 2019-06-06 v1 Machine Learning Machine Learning

Abstract

AI systems are being deployed to support human decision making in high-stakes domains. In many cases, the human and AI form a team, in which the human makes decisions after reviewing the AI's inferences. A successful partnership requires that the human develops insights into the performance of the AI system, including its failures. We study the influence of updates to an AI system in this setting. While updates can increase the AI's predictive performance, they may also lead to changes that are at odds with the user's prior experiences and confidence in the AI's inferences, hurting therefore the overall team performance. We introduce the notion of the compatibility of an AI update with prior user experience and present methods for studying the role of compatibility in human-AI teams. Empirical results on three high-stakes domains show that current machine learning algorithms do not produce compatible updates. We propose a re-training objective to improve the compatibility of an update by penalizing new errors. The objective offers full leverage of the performance/compatibility tradeoff, enabling more compatible yet accurate updates.

Keywords

Cite

@article{arxiv.1906.01148,
  title  = {A Case for Backward Compatibility for Human-AI Teams},
  author = {Gagan Bansal and Besmira Nushi and Ece Kamar and Dan Weld and Walter Lasecki and Eric Horvitz},
  journal= {arXiv preprint arXiv:1906.01148},
  year   = {2019}
}

Comments

presented at 2019 ICML Workshop on Human in the Loop Learning (HILL 2019), Long Beach, USA

R2 v1 2026-06-23T09:40:13.319Z