Operational Feature Fingerprints of Graph Datasets via a White-Box Signal-Subspace Probe
Yuchen Xiong, Swee Keong Yeap, Zhen Hong Ban

TL;DR
This paper introduces WG-SRC, a white-box probe for diagnosing graph datasets and understanding graph neural network behaviors through explicit signal decomposition and classification.
Contribution
It presents a novel white-box diagnostic tool that replaces learned message passing with explicit graph signal components for transparent analysis.
Findings
WG-SRC performs competitively with baseline models on six datasets.
It decomposes graph behavior into raw, low-pass, high-pass, and boundary components.
It enables dataset fingerprinting and intervention analysis for graph signals.
Abstract
Graph neural networks achieve strong node-classification accuracy, but learned message passing entangles ego attributes, neighborhood smoothing, high-pass graph differences, class geometry, and classifier-boundary effects inside opaque representations. This obscures why nodes are classified as they are and which graph-learning mechanisms a dataset requires. We propose WG-SRC, a white-box signal-subspace probe for prediction and graph dataset diagnosis. WG-SRC replaces learned message passing with a fixed, named graph-signal dictionary containing raw features, row- and symmetric-normalized low-pass propagation, and high-pass graph differences. It combines Fisher coordinate selection, class-wise PCA subspaces, closed-form multi-alpha ridge classification, and validation-based score fusion, so prediction and analysis rely on explicit class subspaces, energy-controlled dimensions, and…
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