Atomic-Probe Governance for Skill Updates in Compositional Robot Policies
Xue Qin, Simin Luan, John See, Zeyd Boukhers, Cong Yang, Zhijun Li

TL;DR
This paper introduces a new atomic-quality probe and hybrid selector for managing skill updates in compositional robot policies, addressing the challenge of how skill replacement affects task success.
Contribution
It proposes a novel atomic-quality probe and a hybrid selector that efficiently govern skill updates, improving upon existing methods by balancing accuracy and computational cost.
Findings
Dominant-skill effect significantly influences success rates.
Off-policy behavioral metrics fail to identify dominant skills.
Hybrid selector reduces revalidation costs while maintaining high accuracy.
Abstract
Skill libraries in deployed robotic systems are continually updated through fine-tuning, fresh demonstrations, or domain adaptation, yet existing typed-composition methods (BLADE, SymSkill, Generative Skill Chaining) treat the library as frozen at test time and do not analyze how composition outcomes change when a skill is replaced. We introduce a paired-sampling cross-version swap protocol on robosuite manipulation tasks to characterize this dimension of compositional skill learning. On a dual-arm peg-in-hole task we discover a dominant-skill effect: one ECM achieves 86.7% atomic success rate while every other ECM is at or below 26.7%, and whether this dominant ECM enters a composition shifts the success rate by up to +50pp. We characterize the boundary on a simpler pick task where all atomic policies saturate at 100% and the effect is undefined. Across three tasks we further find that…
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