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Deep depth-based representations of graphs through deep learning networks

机译:通过深度学习网络基于深度的图形表示

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Graph-based representations are powerful tools in structural pattern recognition and machine learning. In this paper, we propose a framework of computing the deep depth-based representations for graph structures. Our work links the ideas of graph complexity measures and deep learning networks. Specifically, for a set of graphs, we commence by computing depth-based representations rooted at each vertex as vertex points. In order to identify an informative depth-based representation subset, we employ the well-known k-means method to identify M dominant centroids of the depth-based representation vectors as prototype representations. To overcome the burdensome computation of using depth-based representations for all graphs, we propose to use the prototype representations to train a deep autoencoder network, that is optimized using Stochastic Gradient Descent together with the Deep Belief Network for pretraining. By inputting the depth-based representations of vertices over all graphs to the trained deep network, we compute the deep representation for each vertex. The resulting deep depth-based representation of a graph is computed by averaging the deep representations of its complete set of vertices. We theoretically demonstrate that the deep depth-based representations of graphs not only reflect both the local and global characteristics of graphs through the depth-based representations, but also capture the main structural relationship and information content over all graphs under investigations. Experimental evaluations demonstrate the effectiveness of the proposed method. (C) 2018 Elsevier B.V. All rights reserved.
机译:基于图的表示形式是结构模式识别和机器学习中的强大工具。在本文中,我们提出了一个用于计算图结构的基于深度的深度表示的框架。我们的工作将图复杂度度量和深度学习网络的思想联系在一起。具体来说,对于一组图形,我们首先计算以每个顶点为根的基于深度的表示作为顶点。为了识别基于信息的基于深度的表示子集,我们采用众所周知的k均值方法将基于深度的表示向量的M个主要质心识别为原型表示。为了克服对所有图形使用基于深度的表示的繁琐计算,我们建议使用原型表示来训练深度自动编码器网络,该网络使用随机梯度下降和深度信念网络进行优化以进行预训练。通过将所有图上基于深度的顶点表示输入到经过训练的深度网络,我们可以计算每个顶点的深度表示。通过对图的完整顶点集的深度表示取平均值,可以计算出图的基于深度的深度表示。我们从理论上证明,图的基于深度的深度表示不仅通过基于深度的表示反映了图的局部和全局特征,而且还捕获了所研究的所有图的主要结构关系和信息内容。实验评估证明了该方法的有效性。 (C)2018 Elsevier B.V.保留所有权利。

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