Finite Automata Extraction: Low-data World Model Learning as Programs from Gameplay Video

Goel, Dave, Guzdial, Matthew, Sarkar, Anurag

arXiv.org Artificial Intelligence 

World models are defined as a compressed spatial and temporal learned representation of an environment. The learned representation is typically a neural network, making transfer of the learned environment dynamics and explainability a challenge. In this paper, we propose an approach, Finite Automata Extraction (FAE), that learns a neuro-symbolic world model from gameplay video represented as programs in a novel domain-specific language (DSL): Retro Coder. Compared to prior world model approaches, FAE learns a more precise model of the environment and more general code than prior DSL-based approaches.