LGMLJul 4, 2019

Improving Attention Mechanism in Graph Neural Networks via Cardinality Preservation

arXiv:1907.02204v465 citations
Originality Incremental advance
AI Analysis

This addresses a theoretical limitation in GNNs for graph-structured data analysis, offering an incremental improvement to attention mechanisms.

The paper tackled the problem of attention-based Graph Neural Networks (GNNs) failing to distinguish certain distinct graph structures due to ignoring cardinality information, and proposed cardinality preserved attention (CPA) models that showed competitive performance in node and graph classification tasks.

Graph Neural Networks (GNNs) are powerful to learn the representation of graph-structured data. Most of the GNNs use the message-passing scheme, where the embedding of a node is iteratively updated by aggregating the information of its neighbors. To achieve a better expressive capability of node influences, attention mechanism has grown to be popular to assign trainable weights to the nodes in aggregation. Though the attention-based GNNs have achieved remarkable results in various tasks, a clear understanding of their discriminative capacities is missing. In this work, we present a theoretical analysis of the representational properties of the GNN that adopts the attention mechanism as an aggregator. Our analysis determines all cases when those attention-based GNNs can always fail to distinguish certain distinct structures. Those cases appear due to the ignorance of cardinality information in attention-based aggregation. To improve the performance of attention-based GNNs, we propose cardinality preserved attention (CPA) models that can be applied to any kind of attention mechanisms. Our experiments on node and graph classification confirm our theoretical analysis and show the competitive performance of our CPA models.

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