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Quantifying the Alignment of Graph and Features in Deep Learning

Yifan Qian, Paul Expert, Tom Rieu, Pietro Panzarasa, Mauricio Barahona

2021IEEE Transactions on Neural Networks and Learning Systems18 citationsDOIOpen Access PDF

Abstract

We show that the classification performance of graph convolutional networks (GCNs) is related to the alignment between features, graph, and ground truth, which we quantify using a subspace alignment measure (SAM) corresponding to the Frobenius norm of the matrix of pairwise chordal distances between three subspaces associated with features, graph, and ground truth. The proposed measure is based on the principal angles between subspaces and has both spectral and geometrical interpretations. We showcase the relationship between the SAM and the classification performance through the study of limiting cases of GCNs and systematic randomizations of both features and graph structure applied to a constructive example and several examples of citation networks of different origins. The analysis also reveals the relative importance of the graph and features for classification purposes.

Topics & Concepts

Pairwise comparisonLinear subspaceGraphSubspace topologyComputer sciencePattern recognition (psychology)Artificial intelligenceAdjacency matrixGround truthMathematicsCombinatoricsTheoretical computer scienceGeometryAdvanced Graph Neural NetworksComplex Network Analysis TechniquesBioinformatics and Genomic Networks
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