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Reducing Human-Robot Goal State Divergence with Environment Design

Authors :
Sikes, Kelsey
Keren, Sarah
Sreedharan, Sarath
Publication Year :
2024

Abstract

One of the most difficult challenges in creating successful human-AI collaborations is aligning a robot's behavior with a human user's expectations. When this fails to occur, a robot may misinterpret their specified goals, prompting it to perform actions with unanticipated, potentially dangerous side effects. To avoid this, we propose a new metric we call Goal State Divergence $\mathcal{(GSD)}$, which represents the difference between a robot's final goal state and the one a human user expected. In cases where $\mathcal{GSD}$ cannot be directly calculated, we show how it can be approximated using maximal and minimal bounds. We then input the $\mathcal{GSD}$ value into our novel human-robot goal alignment (HRGA) design problem, which identifies a minimal set of environment modifications that can prevent mismatches like this. To show the effectiveness of $\mathcal{GSD}$ for reducing differences between human-robot goal states, we empirically evaluate our approach on several standard benchmarks.<br />Comment: 8 pages, 1 figure

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2404.15184
Document Type :
Working Paper