Litcius/Paper detail

Lasagne: A Multi-Layer Graph Convolutional Network Framework via Node-aware Deep Architecture

Xupeng Miao, Wentao Zhang, Yingxia Shao, Bin Cui, Lei Chen, Ce Zhang, Jiawei Jiang

2021IEEE Transactions on Knowledge and Data Engineering32 citationsDOI

Abstract

Graph convolutional networks (GCNs) have been successfully applied in many different real-world tasks. However, most of the existing methods are based on shallow GCN, because multiple layers involve long-distance neighborhood information but lead to the over-smoothing problem. Actually, a similar challenge exists in the depth limitation for primitive convolutional neural networks (CNNs). As the multi-layer architecture can increase the representation ability of GCN, we study and learn from the recent progress in CNN and propose Lasagne, a novel multi-layer GCN framework, empowered by node-aware layer aggregators and factorization-based layer interactions to overcome the over-smoothing problem and realize the full potentials of the GCN model. We analyze how the node locality affects the information propagation in GCN and propose a novel node aggregation mechanism in an adaptive manner. We further demystify Lasagne from a mutual information view and evaluate it on both real-world benchmark data sets and large-scale industrial production data sets. Lasagne shows strong empirical performance on the semi-supervised node classification task and outperforms the state-of-the-art methods without considering the node locality.

Topics & Concepts

Computer scienceLocalityNode (physics)GraphConvolutional neural networkSmoothingBenchmark (surveying)Layer (electronics)Artificial intelligenceTheoretical computer scienceComputer visionPhilosophyStructural engineeringGeographyOrganic chemistryChemistryEngineeringLinguisticsGeodesyAdvanced Graph Neural NetworksRecommender Systems and TechniquesAdvanced Computing and Algorithms
Lasagne: A Multi-Layer Graph Convolutional Network Framework via Node-aware Deep Architecture | Litcius