Proceedings of the 2024 ACM/IEEE International Conference on Human-Robot Interaction 2024
DOI: 10.1145/3610977.3634930
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Preference-Conditioned Language-Guided Abstraction

Andi Peng,
Andreea Bobu,
Belinda Z. Li
et al.

Abstract: Learning from demonstrations is a common way for users to teach robots, but it is prone to spurious feature correlations. Recent work constructs state abstractions, i.e. visual representations containing task-relevant features, from language as a way to perform more generalizable learning. However, these abstractions also depend on a user's preference for what matters in a task, which may be hard to describe or infeasible to exhaustively specify using language alone. How do we construct abstractions to capture… Show more

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