Lecture image placeholder

Premium content

Access to this content requires a subscription. You must be a premium user to view this content.

Monthly subscription - $9.99Pay per view - $4.99Access through your institutionLogin with Underline account
Need help?
Contact us
Lecture placeholder background

AAAI 2026

December 07, 2026

Singapore, Singapore

Would you like to see your presentation here, made available to a global audience of researchers?
Add your own presentation or have us affordably record your next conference.

We address structure learning from zero-inflated count data by casting each node as a zero-inflated generalized linear model and optimizing a smooth, score-based objective under a directed acyclic graph (DAG) constraint. Our method uses node-wise likelihoods with canonical links and enforces acyclicity through a differentiable surrogate constraint combined with sparsity regularization. On simulated zero-inflated count data, it achieved superior performance with faster runtimes. In reverse engineering gene-regulatory networks (GRN), the methods demonstrated performance comparable to or better than the commonly used GRN inference baselines. The optimization is fully vectorized and mini-batched, enabling learning on larger variable sets with practical runtimes. Thus, the proposed method is competitive in learning DAG from zero-inflated count data.

Next from AAAI 2026

Enhancing Robustness of Graph Neural Networks through p-Laplacian
workshop paper

Enhancing Robustness of Graph Neural Networks through p-Laplacian

AAAI 2026

07 December 2026

Stay up to date with the latest Underline news!

Select topic of interest (you can select more than one)

PRESENTATIONS

  • All Presentations
  • For Librarians
  • Resource Center
  • Free Trial
Underline Science, Inc.
1216 Broadway, 2nd Floor, New York, NY 10001, USA

© 2026 Underline - All rights reserved