Publication | Closed Access
DGI: An Easy and Efficient Framework for GNN Model Evaluation
15
Citations
29
References
2023
Year
Unknown Venue
Convolutional Neural NetworkEngineeringMachine LearningNetwork AnalysisGraph Signal ProcessingGraph ProcessingGnn ModelsSpeech RecognitionData ScienceSparse Neural NetworkGnn Model EvaluationComputer EngineeringComputer ScienceDeep LearningNeural Architecture SearchModel CompressionGraph Neural NetworksGraph TheoryGnn ModelGraph AnalysisGraph Neural Network
While many systems have been developed to train graph neural networks (GNNs), efficient model evaluation, which computes node embedding according to a given model, remains to be addressed. For instance, using the widely adopted node-wise approach, model evaluation can account for over 90% of the time in the end-to-end training process due to neighbor explosion, which means that a node accesses its multi-hop neighbors. The layer-wise approach avoids neighbor explosion by conducting computation layer by layer in GNN models. However, layer-wise model evaluation takes considerable implementation efforts because users need to manually decompose the GNN model into layers, and different implementations are required for GNN models with different structures.
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