Extremes of Structural Causal Models
11.04.2025 11:15 – 12:15
RESEARCH INSTITUTE FOR STATISTICS AND INFORMATION SCIENCE: STATISTICS SEMINAR
(jointly with Sebastian Engelke and Frank Röttger)
ABSTRACT
The behavior of extreme observations is well-understood for time series or spatial data, but little is known if the data generating process is a structural causal model (SCM). We study the behavior of extremes in this model class, both for the observational distribution and under extremal interventions. We show that under suitable regularity conditions on the structure functions, the extremal behavior is described by a multivariate Pareto distribution, which can be represented as a new SCM on an extremal graph. Importantly, the latter is a sub-graph of the graph in the original SCM, which means that causal links can disappear in the tails. We further introduce a directed version of extremal graphical models and show that an extremal SCM satisfies the corresponding Markov properties. Based on a new test of extremal conditional independence, we propose two algorithms for learning the extremal causal structure from data. The first is an extremal version of the PC-algorithm, and the second is a pruning algorithm that removes edges from the original graph to consistently recover the extremal graph. The methods are illustrated on river data with known causal ground truth.
Lieu
Bâtiment: Uni Mail
Boulevard du Pont-d'Arve 40
1205 Geneva
Room M 4220, 4th floor
Organisé par
Faculté d'économie et de managementResearch Institute for Statistics and Information Science
Intervenant-e-s
Nicola GNECCO, Dr., Imperial College London, UKentrée libre
Classement
Catégorie: Séminaire