Foundations for Robust yet Simple Sparse Hierarchical Pooling: A New Perspective on Sparse Graph Pooling
Keywords: Graph Machine Learning, Graph Pooling, Hierarchical Pooling, Sparse Pooling
Abstract: This work investigates Standard Sparse Pooling (SSP) methods within Graph Neural Networks, focusing on their effectiveness in preserving graph-level information while performing local pooling.
We analyze the role of Selection and Reduction functions in SSP and introduce a new perspective that addresses the shortcomings of existing methods.
We reveal that while SSP is simple, it has limitations in forming hierarchical representations, leading to potential over-representation in certain regions.
This study provides foundational insights into achieving robust yet simple sparse pooling without unnecessary complexities.
Submission Number: 86
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