2022
DOI: 10.1109/access.2022.3164691
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Hierarchical Structure-Feature Aware Graph Neural Network for Node Classification

Abstract: In recent years, graph neural network is used to process graph data and has been successfully applied to graph node classification task. Due to the complexity of graph structure and the difficulty of obtaining node labels, node classification in datasets with fewer labels becomes a challenge. Existing node classification problems with few-label nodes datasets usually use neighbor aggregation schemes. However, these methods lack the ''graph pooling mechanism,'' which makes these models impossible to make full u… Show more

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