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Temporal Representation Alignment: Successor Features Enable Emergent Compositionality in Robot Instruction Following

8 February 2025
Vivek Myers
Bill Chunyuan Zheng
Anca Dragan
Kuan Fang
Sergey Levine
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Abstract

Effective task representations should facilitate compositionality, such that after learning a variety of basic tasks, an agent can perform compound tasks consisting of multiple steps simply by composing the representations of the constituent steps together. While this is conceptually simple and appealing, it is not clear how to automatically learn representations that enable this sort of compositionality. We show that learning to associate the representations of current and future states with a temporal alignment loss can improve compositional generalization, even in the absence of any explicit subtask planning or reinforcement learning. We evaluate our approach across diverse robotic manipulation tasks as well as in simulation, showing substantial improvements for tasks specified with either language or goal images.

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@article{myers2025_2502.05454,
  title={ Temporal Representation Alignment: Successor Features Enable Emergent Compositionality in Robot Instruction Following },
  author={ Vivek Myers and Bill Chunyuan Zheng and Anca Dragan and Kuan Fang and Sergey Levine },
  journal={arXiv preprint arXiv:2502.05454},
  year={ 2025 }
}
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