AI RESEARCH

Consistency evaluation of benchmarks used for causal discovery

arXiv CS.AI

ArXi:2606.01789v1 Announce Type: new In graphical causal model, causal discovery aims to construct a causal graph based on numerical data and domain knowledge in plain text. However, the evaluation of causal discovery methods remains a challenge in the area as the progress of domain researches often makes benchmark causal graphs contain mis-aligned knowledge. This problem especially affects the evaluation of large language model (LLM) based causal discovery methods as they are sensitive to the new discoveries in the literature.