AI RESEARCH

Scaling Novel Graph Generation via Lightweight Structure-Guided Autoregressive Models

arXiv CS.AI

ArXi:2606.04287v1 Announce Type: cross Generating realistic and diverse graphs is a key problem in machine learning, with applications in molecular discovery, circuit design, cybersecurity, and beyond. However, current graph generative models remain limited by scalability and novelty. Diffusion-based methods often require costly full-adjacency operations and long denoising chains, while many autoregressive and hybrid models have at least quadratic complexity. In addition, these models often imitate