Quantifying Assistive Robustness Via the Natural-Adversarial Frontier
October 16, 2023 Β· Declared Dead Β· π Conference on Robot Learning
"No code URL or promise found in abstract"
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Authors
Jerry Zhi-Yang He, Zackory Erickson, Daniel S. Brown, Anca D. Dragan
arXiv ID
2310.10610
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.LG,
cs.RO
Citations
1
Venue
Conference on Robot Learning
Last Checked
4 months ago
Abstract
Our ultimate goal is to build robust policies for robots that assist people. What makes this hard is that people can behave unexpectedly at test time, potentially interacting with the robot outside its training distribution and leading to failures. Even just measuring robustness is a challenge. Adversarial perturbations are the default, but they can paint the wrong picture: they can correspond to human motions that are unlikely to occur during natural interactions with people. A robot policy might fail under small adversarial perturbations but work under large natural perturbations. We propose that capturing robustness in these interactive settings requires constructing and analyzing the entire natural-adversarial frontier: the Pareto-frontier of human policies that are the best trade-offs between naturalness and low robot performance. We introduce RIGID, a method for constructing this frontier by training adversarial human policies that trade off between minimizing robot reward and acting human-like (as measured by a discriminator). On an Assistive Gym task, we use RIGID to analyze the performance of standard collaborative Reinforcement Learning, as well as the performance of existing methods meant to increase robustness. We also compare the frontier RIGID identifies with the failures identified in expert adversarial interaction, and with naturally-occurring failures during user interaction. Overall, we find evidence that RIGID can provide a meaningful measure of robustness predictive of deployment performance, and uncover failure cases in human-robot interaction that are difficult to find manually. https://ood-human.github.io.
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