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Graph Scattering beyond Wavelet Shackles

About

This work develops a flexible and mathematically sound framework for the design and analysis of graph scattering networks with variable branching ratios and generic functional calculus filters. Spectrally-agnostic stability guarantees for node- and graph-level perturbations are derived; the vertex-set non-preserving case is treated by utilizing recently developed mathematical-physics based tools. Energy propagation through the network layers is investigated and related to truncation stability. New methods of graph-level feature aggregation are introduced and stability of the resulting composite scattering architectures is established. Finally, scattering transforms are extended to edge- and higher order tensorial input. Theoretical results are complemented by numerical investigations: Suitably chosen cattering networks conforming to the developed theory perform better than traditional graph-wavelet based scattering approaches in social network graph classification tasks and significantly outperform other graph-based learning approaches to regression of quantum-chemical energies on QM7.

Christian Koke, Gitta Kutyniok• 2023

Related benchmarks

TaskDatasetResultRank
Graph ClassificationIMDB-B (10-fold cross-validation)
Accuracy73.2
148
Graph ClassificationIMDB-M (10-fold cross-validation)
Accuracy49.47
84
Graph ClassificationCOLLAB (10-fold cross val)
Accuracy80.34
26
Atomization energy predictionQM7 (10-fold cross validation)
MAE3.4
13
Graph ClassificationREDDIT-5K (10-fold cross val)
Accuracy0.5689
11
Graph ClassificationREDDIT-12K (10-fold cross validation)
Accuracy49.03
9
Graph ClassificationREDDIT-B (10-fold cross val)
Accuracy91.6
9
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