Anomaly-resistant Graph Neural Networks via Neural Architecture Search

11/22/2021
by   M. Park, et al.
0

In general, Graph Neural Networks(GNN) have been using a message passing method to aggregate and summarize information about neighbors to express their information. Nonetheless, previous studies have shown that the performance of graph neural networks becomes vulnerable when there are abnormal nodes in the neighborhood due to this message passing method. In this paper, inspired by the Neural Architecture Search method, we present an algorithm that recognizes abnormal nodes and automatically excludes them from information aggregation. Experiments on various real worlds datasets show that our proposed Neural Architecture Search-based Anomaly Resistance Graph Neural Network (NASAR-GNN) is actually effective.

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