Feb. 6, 2024, 5:47 a.m. | Andi Peng Andreea Bobu Belinda Z. Li Theodore R. Sumers Ilia Sucholutsky Nishanth Kumar Thomas L. Grif

cs.LG updates on arXiv.org arxiv.org

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 these latent preferences? …

abstraction abstractions correlations cs.ai cs.lg cs.ro feature features language robots state visual work

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