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[2G4-GS-2-01] Visualizing the Prediction Basis of Graph Convolution Networks using a Query Learning Algorithm for Ordered Tree Patterns
Keywords:Graph Convolution Networks, Query Learning Algorithm, Ordered Tree Pattern
In this paper, a query learning algorithm visualizing the prediction basis of a trained Graph Convolution Network (GCN) M whose training data is a set D of ordered trees is proposed. The proposed algorithm is based on the query learning model, one of the learning models in computational learning theory, and works with a trained GCN M as an oracle. In more detail, using a constant number of ordered trees F in D, the prediction basis of M is visualized as a representation of the ordered tree pattern by repeating queries to M as an oracle O(n2) times, where n is the maximum number of nodes of ordered trees in F. In addition, for a set D of ordered trees that match the synthetic ordered tree pattern (target pattern), we made a trained GCN M with a subset of D as training data. Then, in order to show effectiveness of the proposed algorithm, we report the ordered tree pattern (pattern for visualization) obtained by executing the proposed algorithm using M as an oracle.
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