On Sample-Efficient Generalized Planning via Learned Transition Models
This paper proposes a sample-efficient approach to generalized planning that learns explicit neural transition models to predict intermediate world states, demonstrating superior out-of-distribution performance and data efficiency compared to direct action-sequence prediction methods.