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Why LLMs Fail at Causal Discovery and How Interventional Agents Escape

Large language models fundamentally cannot perform causal discovery from observational data due to a mathematical limitation proven in a new study, which shows that fine-tuning and other learning methods produce predictors incapable of distinguishing between causal graphs that generate similar data. Researchers propose Agentic Causal Bayesian Optimization (A-CBO), where a frozen language model acts as an interventional oracle while an external Bayesian loop concentrates beliefs over candidate graphs, bypassing the proven obstruction. On a new 24-variable benchmark with 18,000 test samples, A-CBO significantly outperforms both fine-tuned models and preference optimization, with its advantage growing as complexity increases.

read1 min publishedMay 28, 2026

arXiv:2605.27567v1 Announce Type: new Abstract: Causal discovery is a cornerstone of scientific reasoning, yet whether large language models can perform it reliably remains an open question. Recent benchmarks show that even fine-tuned models plateau on simple causal graphs and degrade as complexity grows, but why they fail has not been established. We prove the failure is fundamental: supervised fine-tuning, direct preference optimization, and in-context learning all produce predictors that cannot distinguish between causal graphs generating similar observational data, and any attempt to do so requires the model's internal representations to grow unboundedly, violating the very conditions under which these methods work. We formalize this as a kernel obstruction theorem, establishing that the limitation is intrinsic to the learning paradigm, \emph{not any particular model or dataset}. We propose Agentic Causal Bayesian Optimization (A-CBO), wherein a frozen language model serves as an interventional oracle answering targeted queries about intervention effects, while an external Bayesian loop concentrates beliefs over candidate graphs in logarithmically many rounds. Because the decision operates outside the space where the obstruction applies, A-CBO provably converges while the underlying model remains unchanged. On Corr2Cause, A-CBO matches fine-tuned baselines without any training. On Extended Corr2Cause, a new benchmark scaling to 24 variables with 18K test samples, A-CBO significantly outperforms both fine-tuning and preference optimization, with the advantage growing

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