English

DIFFormer: Scalable (Graph) Transformers Induced by Energy Constrained Diffusion

Machine Learning 2023-05-30 v4 Artificial Intelligence

Abstract

Real-world data generation often involves complex inter-dependencies among instances, violating the IID-data hypothesis of standard learning paradigms and posing a challenge for uncovering the geometric structures for learning desired instance representations. To this end, we introduce an energy constrained diffusion model which encodes a batch of instances from a dataset into evolutionary states that progressively incorporate other instances' information by their interactions. The diffusion process is constrained by descent criteria w.r.t.~a principled energy function that characterizes the global consistency of instance representations over latent structures. We provide rigorous theory that implies closed-form optimal estimates for the pairwise diffusion strength among arbitrary instance pairs, which gives rise to a new class of neural encoders, dubbed as DIFFormer (diffusion-based Transformers), with two instantiations: a simple version with linear complexity for prohibitive instance numbers, and an advanced version for learning complex structures. Experiments highlight the wide applicability of our model as a general-purpose encoder backbone with superior performance in various tasks, such as node classification on large graphs, semi-supervised image/text classification, and spatial-temporal dynamics prediction.

Keywords

Cite

@article{arxiv.2301.09474,
  title  = {DIFFormer: Scalable (Graph) Transformers Induced by Energy Constrained Diffusion},
  author = {Qitian Wu and Chenxiao Yang and Wentao Zhao and Yixuan He and David Wipf and Junchi Yan},
  journal= {arXiv preprint arXiv:2301.09474},
  year   = {2023}
}

Comments

Published at ICLR 2023 as a spotlight presentation, the implementation code is available at https://github.com/qitianwu/DIFFormer

R2 v1 2026-06-28T08:17:51.375Z