Network Recovery from Cascade Data: A Debiased Jacobian-Based Machine Learning Approach

46 Pages Posted: 9 Jun 2026

See all articles by Lei Huang

Lei Huang

Massachusetts Institute of Technology (MIT)

Date Written: June 01, 2026

Abstract

Many important outcomes unfold as dynamic cascades, including product adoption, disease spread, financial distress, and information diffusion. A central challenge is to recover the hidden influence network behind these cascades. Existing methods typically assume a specific diffusion model, and their performance degrades substantially when that assumption is misspecified. We propose CascadeNet, a Jacobian-based machine learning framework for network recovery that does not require specifying a diffusion mechanism. The key idea is that the underlying influence structure can be characterized by the Jacobian of the one-step transition function. CascadeNet first constructs a flexible estimator of the transition function, and further applies Neyman-orthogonal debiasing via the Riesz representer, so that the debiased Jacobian is root-n consistent and asymptotically normal, enabling formal inference on the network structure. We validate CascadeNet in both a simulation exercise and a real-world empirical application. In simulations, where the data-generating process is known, CascadeNet achieves the highest network recovery accuracy across nine common data-generating processes. In an empirical application to COVID-19 transmission across Spain's 52 provinces, CascadeNet recovers transmission networks that are significantly correlated with the true inter-province mobility network, whereas networks recovered by baseline methods show no significant alignment with the ground truth.

Keywords: network inference, Jacobian, debiased machine learning

Suggested Citation

Huang, Lei, Network Recovery from Cascade Data: A Debiased Jacobian-Based Machine Learning Approach (June 01, 2026). Available at SSRN: https://ssrn.com/abstract=6885098 or http://dx.doi.org/10.2139/ssrn.6885098

Lei Huang (Contact Author)

Massachusetts Institute of Technology (MIT) ( email )

77 Massachusetts Avenue
50 Memorial Drive
Cambridge, MA 02139-4307
United States

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