AIDec 19, 2025

Unifying Causal Reinforcement Learning: Survey, Taxonomy, Algorithms and Applications

arXiv:2512.18135v11 citationsh-index: 4
Originality Synthesis-oriented
AI Analysis

This is an incremental survey paper that synthesizes existing research for researchers in AI and RL.

The paper surveys the integration of causal inference with reinforcement learning to address limitations like low explainability and generalization failures in classical RL, categorizing approaches and discussing challenges and future directions.

Integrating causal inference (CI) with reinforcement learning (RL) has emerged as a powerful paradigm to address critical limitations in classical RL, including low explainability, lack of robustness and generalization failures. Traditional RL techniques, which typically rely on correlation-driven decision-making, struggle when faced with distribution shifts, confounding variables, and dynamic environments. Causal reinforcement learning (CRL), leveraging the foundational principles of causal inference, offers promising solutions to these challenges by explicitly modeling cause-and-effect relationships. In this survey, we systematically review recent advancements at the intersection of causal inference and RL. We categorize existing approaches into causal representation learning, counterfactual policy optimization, offline causal RL, causal transfer learning, and causal explainability. Through this structured analysis, we identify prevailing challenges, highlight empirical successes in practical applications, and discuss open problems. Finally, we provide future research directions, underscoring the potential of CRL for developing robust, generalizable, and interpretable artificial intelligence systems.

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