GraphTreeGen: Subtree-Centric Approach to Efficient and Supervised Graph Generation
Yitong Luo, Islem Rekik

TL;DR
GraphTreeGen introduces a subtree-centric graph generative model that efficiently captures local structures and predicts edge weights, significantly improving connectome synthesis accuracy and scalability over existing methods.
Contribution
The paper presents GraphTreeGen, a novel subtree-based framework that enhances connectome generation by focusing on local structures and reducing computational costs.
Findings
Outperforms state-of-the-art models in self-supervised tasks
Achieves higher structural fidelity and more accurate edge weights
Uses less memory than existing graph generative models
Abstract
Brain connectomes, representing neural connectivity as graphs, are crucial for understanding brain organization but costly and time-consuming to acquire, motivating generative approaches. Recent advances in graph generative modeling offer a data-driven alternative, enabling synthetic connectome generation and reducing dependence on large neuroimaging datasets. However, current models face key limitations: (i) compressing the whole graph into a single latent code (e.g., VGAEs) blurs fine-grained local motifs; (ii) relying on rich node attributes rarely available in connectomes reduces reconstruction quality; (iii) edge-centric models emphasize topology but overlook accurate edge-weight prediction, harming quantitative fidelity; and (iv) computationally expensive designs (e.g., edge-conditioned convolutions) impose high memory demands, limiting scalability. We propose GraphTreeGen (GTG),…
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