FedCDI framework design

Federated Causal Discovery From Interventions

Preprint 2022

We propose FedCDI, a framework for causal discovery in federated settings where data cannot leave local sites. Rather than sharing raw samples, clients exchange belief updates over causal graphs, enabling privacy-preserving inference from both shared and heterogeneous interventional data.

Amin Abyaneh, Nino Scherrer, Patrick Schwab, Stefan Bauer, Bernhard Schölkopf, Arash Mehrjou