AI RESEARCH
Identification and Inference in Nonlinear Dynamic Network Models
arXiv CS.LG
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ArXi:2604.04961v1 Announce Type: cross We study identification and inference in nonlinear dynamic systems defined on unknown interaction networks. The system evolves through an unobserved dependence matrix governing cross-sectional shock propagation via a nonlinear operator. We show that the network structure is not generically identified, and that identification requires sufficient spectral heterogeneity. In particular, identification arises when the network induces non-exchangeable covariance patterns through heterogeneous amplification of eigenmodes.