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Graph Random Neural Features for Distance-Preserving Graph Representations

机译:图形随机神经特征,用于远程保留图形表示

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We present Graph Random Neural Features (GRNF), a novel embedding method from graph-structured data to real vectors based on a family of graph neural networks. The embedding naturally deals with graph isomorphism and preserves the metric structure of the graph domain, in probability. In addition to being an explicit embedding method, it also allows us to efficiently and effectively approximate graph metric distances (as well as complete kernel functions); a criterion to select the embedding dimension trading off the approximation accuracy with the computational cost is also provided. GRNF can be used within traditional processing methods or as a training-free input layer of a graph neural network. The theoretical guarantees that accompany GRNF ensure that the considered graph distance is metric, hence allowing to distinguish any pair of non-isomorphic graphs.
机译:我们呈现图表随机神经特征(GRNF),从图形结构数据到基于图形神经网络系列的实际矢量的新型嵌入方法。 嵌入自然地处理图同构术并保留了概率的图形域的度量结构。 除了是一种明确的嵌入方法之外,它还允许我们有效且有效地近似图形度量距离(以及完整的内核功能); 还提供了选择嵌入维度与计算成本的近似准确度选择嵌入维度的标准。 GRNF可以在传统的处理方法中使用或作为图形神经网络的无训练输入层。 伴随GRNF的理论保证确保所考虑的图形距离是指标,因此允许区分任何一对非异构图。

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