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Toward Compositional Generalization in Object-Oriented World Modeling

2022-04-28 17:22:45
Linfeng Zhao, Lingzhi Kong, Robin Walters, Lawson L.S. Wong

Abstract

Compositional generalization is a critical ability in learning and decision-making. We focus on the setting of reinforcement learning in object-oriented environments to study compositional generalization in world modeling. We (1) formalize the compositional generalization problem with an algebraic approach and (2) study how a world model can achieve that. We introduce a conceptual environment, Object Library, and two instances, and deploy a principled pipeline to measure the generalization ability. Motivated by the formulation, we analyze several methods with exact} or no compositional generalization ability using our framework, and design a differentiable approach, Homomorphic Object-oriented World Model (HOWM), that achieves approximate but more efficient compositional generalization.

Abstract (translated)

URL

https://arxiv.org/abs/2204.13661

PDF

https://arxiv.org/pdf/2204.13661.pdf


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