AILGApr 9, 2025

Better Decisions through the Right Causal World Model

arXiv:2504.07257v11 citationsh-index: 11
Originality Incremental advance
AI Analysis

This addresses the issue of brittle generalization in RL for dynamic scenarios, though it appears incremental by combining existing techniques like object-centric modeling and symbolic regression.

The paper tackles the problem of reinforcement learning agents exploiting spurious correlations by introducing COMET, an algorithm that learns interpretable causal world models, resulting in improved accuracy and robustness in Atari environments like Pong and Freeway.

Reinforcement learning (RL) agents have shown remarkable performances in various environments, where they can discover effective policies directly from sensory inputs. However, these agents often exploit spurious correlations in the training data, resulting in brittle behaviours that fail to generalize to new or slightly modified environments. To address this, we introduce the Causal Object-centric Model Extraction Tool (COMET), a novel algorithm designed to learn the exact interpretable causal world models (CWMs). COMET first extracts object-centric state descriptions from observations and identifies the environment's internal states related to the depicted objects' properties. Using symbolic regression, it models object-centric transitions and derives causal relationships governing object dynamics. COMET further incorporates large language models (LLMs) for semantic inference, annotating causal variables to enhance interpretability. By leveraging these capabilities, COMET constructs CWMs that align with the true causal structure of the environment, enabling agents to focus on task-relevant features. The extracted CWMs mitigate the danger of shortcuts, permitting the development of RL systems capable of better planning and decision-making across dynamic scenarios. Our results, validated in Atari environments such as Pong and Freeway, demonstrate the accuracy and robustness of COMET, highlighting its potential to bridge the gap between object-centric reasoning and causal inference in reinforcement learning.

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