ROHCMay 23

PACT: Proactive Asking for Continual Task Assistance in Human-Robot Collaboration

arXiv:2605.2435027.4
Predicted impact top 14% in RO · last 90 daysOriginality Incremental advance
AI Analysis

For robotic assistants in long-term collaboration, PACT addresses the inefficiency of passive inference by enabling proactive clarification, leading to more reliable and adaptive assistance.

PACT introduces a proactive asking framework for robots to seek clarification when uncertain, improving assistance accuracy and clarification utility in multi-day human-robot collaboration tasks.

Robotic assistants in long-term human-robot collaboration need to assist users under partial observations while leveraging cross-day interaction history. However, human traits and routines are often unknown at the beginning of collaboration, making passive infer-then-act assistance ineffective and inefficient. To address this challenge, we study a cross-day proactive asking setting for continual task assistance and propose PACT (Proactive Asking for Continual Task Assistance), an ask-or-act framework that determines whether clarification should be sought before taking action. PACT leverages current observations together with accumulated interaction history to evaluate contextual sufficiency, enabling the robot to provide more reliable assistance and progressively adapt to the user over time. We implement its primary learned instantiation using reinforcement learning and evaluate alternative instantiations under the same framework. To assess such behavior, we further introduce a clarification utility metric that quantifies the trade-off between assistance accuracy and the frequency of clarification requests. Experiments in multi-day embodied collaboration scenarios demonstrate that, compared with passive inference baselines, PACT consistently improves both assistance accuracy and clarification utility, highlighting the importance of proactive asking in continual human-robot collaboration.

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