LGAIDMNEMLFeb 3, 2024

Future Directions in the Theory of Graph Machine Learning

NVIDIA
arXiv:2402.02287v48 citationsh-index: 57
Originality Synthesis-oriented
AI Analysis

This is an incremental position paper addressing theoretical gaps in graph machine learning for researchers in the field.

The paper argues that the graph machine learning community should shift focus to developing a balanced theory that better integrates expressive power, generalization, and optimization, as current theoretical advancements do not align well with practical training methods.

Machine learning on graphs, especially using graph neural networks (GNNs), has seen a surge in interest due to the wide availability of graph data across a broad spectrum of disciplines, from life to social and engineering sciences. Despite their practical success, our theoretical understanding of the properties of GNNs remains highly incomplete. Recent theoretical advancements primarily focus on elucidating the coarse-grained expressive power of GNNs, predominantly employing combinatorial techniques. However, these studies do not perfectly align with practice, particularly in understanding the generalization behavior of GNNs when trained with stochastic first-order optimization techniques. In this position paper, we argue that the graph machine learning community needs to shift its attention to developing a balanced theory of graph machine learning, focusing on a more thorough understanding of the interplay of expressive power, generalization, and optimization.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes