Beyond Mimicry: Toward Lifelong Adaptability in Imitation Learning
AI 摘要
论文提出模仿学习应关注组合泛化能力而非完美复现,并提出了新的研究方向和评估指标。
主要贡献
- 指出当前模仿学习的局限性在于缺乏适应性
- 提出以组合泛化能力为核心的模仿学习研究方向
- 提出了组合泛化能力的评估指标和混合架构
方法论
提出了一种新的研究议程,从认知科学和文化演进的角度出发,探索模仿学习的适应性。
原文摘要
Imitation learning stands at a crossroads: despite decades of progress, current imitation learning agents remain sophisticated memorisation machines, excelling at replay but failing when contexts shift or goals evolve. This paper argues that this failure is not technical but foundational: imitation learning has been optimised for the wrong objective. We propose a research agenda that redefines success from perfect replay to compositional adaptability. Such adaptability hinges on learning behavioural primitives once and recombining them through novel contexts without retraining. We establish metrics for compositional generalisation, propose hybrid architectures, and outline interdisciplinary research directions drawing on cognitive science and cultural evolution. Agents that embed adaptability at the core of imitation learning thus have an essential capability for operating in an open-ended world.