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Graph Neural Network Meets Sparse Representation: Graph Sparse Neural Networks via Exclusive Group Lasso

Bo Jiang, Beibei Wang, Si Chen, Jin Tang, Bin Luo

2023IEEE Transactions on Pattern Analysis and Machine Intelligence15 citationsDOI

Abstract

Existing GNNs usually conduct the layer-wise message propagation via the 'full' aggregation of all neighborhood information which are usually sensitive to the structural noises existed in the graphs, such as incorrect or undesired redundant edge connections. To overcome this issue, we propose to exploit Sparse Representation (SR) theory into GNNs and propose Graph Sparse Neural Networks (GSNNs) which conduct sparse aggregation to select reliable neighbors for message aggregation. GSNNs problem contains discrete/sparse constraint which is difficult to be optimized. Thus, we then develop a tight continuous relaxation model Exclusive Group Lasso GNNs (EGLassoGNNs) for GSNNs. An effective algorithm is derived to optimize the proposed EGLassoGNNs model. Experimental results on several benchmark datasets demonstrate the better performance and robustness of the proposed EGLassoGNNs model.

Topics & Concepts

Computer scienceSparse approximationRobustness (evolution)Message passingGraphDense graphArtificial intelligenceBenchmark (surveying)Artificial neural networkExploitLasso (programming language)Pattern recognition (psychology)Theoretical computer scienceAlgorithmBiochemistryGeneGeodesyComputer securityLine graphWorld Wide WebProgramming languageGeographyChemistry1-planar graphAdvanced Graph Neural NetworksMachine Learning and ELMDomain Adaptation and Few-Shot Learning
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