Abstract
Graph Neural Networks (GNNs) are powerful models for graph-structured data, with broad applications. However, the interplay between GNN parameter optimization, expressivity, and generalization remains poorly understood. We address this by introducing an efficient learnable dimensionality reduction method for visualizing GNN loss landscapes, and by analyzing the effects of over-smoothing, jumping knowledge, quantization, sparsification, and preconditioner on GNN optimization. Our learnable projection method surpasses the state-of-the-art PCA-based approach, enabling accurate reconstruction of high-dimensional parameters with lower memory usage. We further show that architecture, sparsification, and optimizer’s preconditioning significantly impact the GNN optimization landscape and their training process and final prediction performance. These insights contribute to developing more efficient designs of GNN architectures and training strategies.
| Original language | English |
|---|---|
| Title of host publication | Artificial Neural Networks and Machine Learning. ICANN 2025 International Workshops and Special Sessions |
| Subtitle of host publication | 34th International Conference on Artificial Neural Networks, Kaunas, Lithuania, September 9–12, 2025, Proceedings, Part V |
| Publisher | Springer Cham |
| Pages | 69-81 |
| ISBN (Electronic) | 978-3-032-04552-2 |
| ISBN (Print) | 978-3-032-04551-5 |
| DOIs | |
| Publication status | Published - 23 Sept 2025 |
Publication series
| Series | Lecture Notes in Computer Science |
|---|---|
| ISSN | 0302-9743 |
Austrian Fields of Science 2012
- 102019 Machine learning
- 102018 Artificial neural networks
Projects
- 1 Active
-
Algorithmic Data Science for Computational Drug Discovery
Kriege, N. M. (Project Lead) & Gansterer, W. (Co-Lead)
1/05/20 → 30/11/28
Project: Research funding
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