ProGMLP: A Progressive Framework for GNN-to-MLP Knowledge Distillation with Efficient Trade-offs

Authors

  • Weigang Lu The Hong Kong University of Science and Technology
  • Ziyu Guan Xidian University
  • Wei Zhao Xidian University
  • Yaming Yang Xidian University
  • Yujie Sun Xidian University
  • Zheng Liang Hong Kong University of Science and Technology
  • Yibing Zhan JD Explore Academy
  • Dapeng Tao Yunnan University

DOI:

https://doi.org/10.1609/aaai.v40i29.39587

Abstract

GNN-to-MLP (G2M) methods have emerged as a promising approach to accelerate Graph Neural Networks (GNNs) by distilling their knowledge into simpler Multi-Layer Perceptrons (MLPs). These methods bridge the gap between the expressive power of GNNs and the computational efficiency of MLPs, making them well-suited for resource-constrained environments. However, existing G2M methods are limited by their inability to flexibly adjust inference cost and accuracy dynamically, a critical requirement for real-world applications where computational resources and time constraints can vary significantly. To address this, we introduce a Progressive framework designed to offer flexible and on-demand trade-offs between inference cost and accuracy for GNN-to-MLP knowledge distillation (ProGMLP). ProGMLP employs a Progressive Training Structure (PTS), where multiple MLP students are trained in sequence, each building on the previous one. Furthermore, ProGMLP incorporates Progressive Knowledge Distillation (PKD) to iteratively refine the distillation process from GNNs to MLPs, and Progressive Mixup Augmentation (PMA) to enhance generalization by progressively generating harder mixed samples. Our approach is validated through comprehensive experiments on eight real-world graph datasets, demonstrating that ProGMLP maintains high accuracy while dynamically adapting to varying runtime scenarios, making it highly effective for deployment in diverse application settings.

Published

2026-03-14

How to Cite

Lu, W., Guan, Z., Zhao, W., Yang, Y., Sun, Y., Liang, Z., … Tao, D. (2026). ProGMLP: A Progressive Framework for GNN-to-MLP Knowledge Distillation with Efficient Trade-offs. Proceedings of the AAAI Conference on Artificial Intelligence, 40(29), 24088–24096. https://doi.org/10.1609/aaai.v40i29.39587

Issue

Section

AAAI Technical Track on Machine Learning VI