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Exploring biological network structure using exponential random graph models

机译:使用指数随机图模型探索生物网络结构

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Motivation: The functioning of biological networks depends in large part on their complex underlying structure. When studying their systemic nature many modeling approaches focus on identifying simple, but prominent, structural components, as such components are easier to understand, and, once identified, can be used as building blocks to succinctly describe the network. Results: In recent social network studies, exponential random graph models have been used extensively to model global social network structure as a function of their 'local features'. Starting from those studies, we describe the exponential random graph models and demonstrate their utility in modeling the architecture of biological networks as a function of the prominence of local features. We argue that the flexibility, in terms of the number of available local feature choices, and scalability, in terms of the network sizes, make this approach ideal for statistical modeling of biological networks. We illustrate the modeling on both genetic and metabolic networks and provide a novel way of classifying biological networks based on the prevalence of their local features.
机译:动机:生物网络的功能在很大程度上取决于其复杂的基础结构。在研究其系统性质时,许多建模方法都将重点放在识别简单但突出的结构组件上,因为这些组件更易于理解,并且一旦被识别,就可以用作构建模块来简洁地描述网络。结果:在最近的社交网络研究中,指数随机图模型已被广泛用于根据其“局部特征”对全球社交网络结构进行建模。从这些研究开始,我们描述了指数随机图模型,并证明了它们在根据局部特征的突出程度对生物网络的体系结构进行建模时的效用。我们认为,就可用局部特征选择的数量而言的灵活性以及就网络规模而言的可伸缩性,使该方法成为生物网络统计建模的理想选择。我们说明了遗传和代谢网络上的建模,并提供了一种基于其局部特征的普遍性对生物网络进行分类的新颖方法。

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