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Main Authors: Duan, Yuanlin, Wang, Yuning, Qiu, Wenjie, Zhu, He
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.08731
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author Duan, Yuanlin
Wang, Yuning
Qiu, Wenjie
Zhu, He
author_facet Duan, Yuanlin
Wang, Yuning
Qiu, Wenjie
Zhu, He
contents Despite its promise, imitation learning often fails in long-horizon environments where perfect replication of demonstrations is unrealistic and small errors can accumulate catastrophically. We introduce Cago (Capability-Aware Goal Sampling), a novel learning-from-demonstrations method that mitigates the brittle dependence on expert trajectories for direct imitation. Unlike prior methods that rely on demonstrations only for policy initialization or reward shaping, Cago dynamically tracks the agent's competence along expert trajectories and uses this signal to select intermediate steps--goals that are just beyond the agent's current reach--to guide learning. This results in an adaptive curriculum that enables steady progress toward solving the full task. Empirical results demonstrate that Cago significantly improves sample efficiency and final performance across a range of sparse-reward, goal-conditioned tasks, consistently outperforming existing learning from-demonstrations baselines.
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id arxiv_https___arxiv_org_abs_2601_08731
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Learning from Demonstrations via Capability-Aware Goal Sampling
Duan, Yuanlin
Wang, Yuning
Qiu, Wenjie
Zhu, He
Artificial Intelligence
Despite its promise, imitation learning often fails in long-horizon environments where perfect replication of demonstrations is unrealistic and small errors can accumulate catastrophically. We introduce Cago (Capability-Aware Goal Sampling), a novel learning-from-demonstrations method that mitigates the brittle dependence on expert trajectories for direct imitation. Unlike prior methods that rely on demonstrations only for policy initialization or reward shaping, Cago dynamically tracks the agent's competence along expert trajectories and uses this signal to select intermediate steps--goals that are just beyond the agent's current reach--to guide learning. This results in an adaptive curriculum that enables steady progress toward solving the full task. Empirical results demonstrate that Cago significantly improves sample efficiency and final performance across a range of sparse-reward, goal-conditioned tasks, consistently outperforming existing learning from-demonstrations baselines.
title Learning from Demonstrations via Capability-Aware Goal Sampling
topic Artificial Intelligence
url https://arxiv.org/abs/2601.08731