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Learning Structural Loss Parameters on Graph Embedding Applied on Symbolic Graphs

机译:学习在符号图上应用图嵌入的结构损失参数

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We propose an amelioration of proposed Graph Embedding (GEM) method in previous work that takes advantages of structural pattern representation and the structured distortion. it models an Attributed Graph (AG) as a Probabilistic Graphical Model (PGM). Then, it learns the parameters of this PGM presented by a vector, as new signature of AG in a lower dimensional vectorial space. We focus to adapt the structured learning algorithm via 1_slack formulation with a suitable risk function, called Graph Edit Distance (GED). It defines the dissimilarity of the ground truth and predicted graph labels. It determines by the error tolerant graph matching using bipartite graph matching algorithm. We apply Structured Support Vector Machines (SSVM) to process classification task. During our experiments, we got our results on the GREC dataset.
机译:我们在以前的工作中提出了一种改进的图嵌入(GEM)方法,该方法利用了结构模式表示和结构化失真的优势。它将属性图(AG)建模为概率图形模型(PGM)。然后,它学习由向量表示的该PGM的参数,作为低维向量空间中AG的新签名。我们专注于通过1_slack公式调整结构化学习算法,并采用合适的风险函数,称为Graph Edit Distance(GED)。它定义了基本事实与预测图标签的相似性。它通过使用二部图匹配算法的容错图匹配来确定。我们将结构化支持向量机(SSVM)应用于过程分类任务。在实验过程中,我们在GREC数据集上得到了结果。

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