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Edge Replacement Grammars: A Formal Language Approach for Generating Graphs

机译:边缘替换语法:一种用于生成图形的正式语言方法

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Graphs are increasingly becoming ubiquitous as models for structured data. A generative model that closely mimics the structural properties of a given set of graphs has utility in a variety of domains. Much of the existing work require that a large number of parameters, in fact exponential in size of the graphs, be estimated from the data. We take a slightly different approach to this problem, leveraging the extensive prior work in the formal graph grammar literature. In this paper, we propose a graph generation model based on Probabilistic Edge Replacement Grammars (PERGs). We propose a variant of PERG called Restricted PERG (RPERG), which is analogous to PCFGs in string grammar literature. With this restriction, we are able to derive a learning algorithm for estimating the parameters of the grammar from graph data. We empirically demonstrate on real life datasets that RPERGs outperform existing methods for graph generation. We improve on the performance of the state-of-the-art Hyperedge Replacement Grammar based graph generative model. Despite being a context free grammar, the proposed model is able to capture many of the structural properties of real networks, such as degree distributions, power law and spectral characteristics.
机译:图表越来越变得普遍存在于结构化数据的模型。一种密切地模拟给定图集组结构的生成模型在各种域中具有效用。实际上,现有的大部分工作需要大量参数,实际上是图表大小的指数。我们对这个问题采取了略微不同的方法,利用了正规图语法文学中的广泛上行工作。在本文中,我们提出了一种基于概率边缘替代语法(Pergs)的图形生成模型。我们提出了一种称为限制Perg(RPERG)的Perg的变种,类似于串语法文献中的PCFG。通过这种限制,我们能够推导出一种学习算法,用于估计来自图数据的语法参数。我们经验上展示了RPERGS优于图形生成方法的现实生活数据集。我们改进了基于最先进的超级替代语法的图形生成模型的性能。尽管是一种语境自由语法,所提出的模型能够捕获真实网络的许多结构特性,例如度分布,权力法和光谱特性。

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