← Back to Benchmarks
simmediumimitationmetric · varies

Offline Discovery of Interpretable Skills from Multi-Task Trajectories

Description

Hierarchical Imitation Learning is a powerful paradigm for acquiring complex robot behaviors from demonstrations. A central challenge, however, lies in discovering reusable skills from long-horizon, multi-task offline data, especially when the data lacks explicit rewards or subtask annotations. In this work, we introduce LOKI, a three-stage end-to-end learning framework designed for offline skill discovery and hierarchical imitation. The framework commences with a two-stage, weakly supervised sk

Source

http://arxiv.org/abs/2602.01018v1