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Mixture models and exploratory analysis in networks

机译:网络中的混合模型和探索性分析

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摘要

Networks are widely used in the biological, physical, and social sciences as a concise mathematical representation of the topology of systems of interacting components. Understanding the structure of these networks is one of the outstanding challenges in the study of complex systems. Here we describe a general technique for detecting structural features in large-scale network data that works by dividing the nodes of a network into classes such that the members of each class have similar patterns of connection to other nodes. Using the machinery of probabilistic mixture models and the expectation-maximization algorithm, we show that it is possible to detect, without prior knowledge of what we are looking for, a very broad range of types of structure in networks. We give a number of examples demonstrating how the method can be used to shed light on the properties of real-world networks, including social and information networks.
机译:网络在生物,物理和社会科学中被广泛用作交互组件系统拓扑的简明数学表示。理解这些网络的结构是研究复杂系统的主要挑战之一。在这里,我们描述了一种用于检测大规模网络数据中结构特征的通用技术,该技术通过将网络的节点划分为类,使每个类的成员具有与其他节点的相似连接模式,从而进行工作。使用概率混合模型的机制和期望最大化算法,我们表明无需事先了解我们所寻找的内容,就可以检测网络中非常广泛的结构类型。我们提供了许多示例,说明如何使用该方法来阐明包括社交网络和信息网络在内的真实网络的属性。

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