Robust Model-Free Identification of the Causal Networks Underlying Complex Nonlinear Systems
Inferring causal networks from noisy observations is of vital importance in various fields.Due to the complexity of system modeling, the way in which universal and feasible inference algorithms are studied is a key challenge for network reconstruction.In this study, without any assumptions, we develop a novel model-free framework to uncover only th