Nataly Pineda-Casta\~neda
2026
ClimateCause: Complex and Implicit Causal Structures in Climate Reports
Liesbeth Allein | Nataly Pineda-Casta\~neda | Andrea Rocci | Marie-Francine Moens
Findings of the Association for Computational Linguistics: ACL 2026
Liesbeth Allein | Nataly Pineda-Casta\~neda | Andrea Rocci | Marie-Francine Moens
Findings of the Association for Computational Linguistics: ACL 2026
Understanding climate change requires reasoning over complex causal networks. Yet, existing causal discovery datasets predominantly capture explicit, direct causal relations. We introduce ClimateCause, a manually expert-annotated dataset of higher-order causal structures from science-for-policy climate reports, including implicit and nested causality. Cause-effect expressions are normalized and disentangled into individual causal relations to facilitate graph construction, with unique annotations for cause-effect correlation, relation type, and spatiotemporal context. We further demonstrate ClimateCause’s value for quantifying readability based on the semantic complexity of causal graphs underlying a statement. Finally, large language model benchmarking on correlation inference and causal chain reasoning highlights the latter as a key challenge.