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Open AccessJournal ArticleDOI

Network sampling and classification: An investigation of network model representations

TLDR
It is argued that conclusions based on simulated network studies must focus on the full features of the connectivity patterns of a network instead of on the limited set of network metrics for a specific network type.
Abstract
Methods for generating a random sample of networks with desired properties are important tools for the analysis of social, biological, and information networks. Algorithm-based approaches to sampling networks have received a great deal of attention in recent literature. Most of these algorithms are based on simple intuitions that associate the full features of connectivity patterns with specific values of only one or two network metrics. Substantive conclusions are crucially dependent on this association holding true. However, the extent to which this simple intuition holds true is not yet known. In this paper, we examine the association between the connectivity patterns that a network sampling algorithm aims to generate and the connectivity patterns of the generated networks, measured by an existing set of popular network metrics. We find that different network sampling algorithms can yield networks with similar connectivity patterns. We also find that the alternative algorithms for the same connectivity pattern can yield networks with different connectivity patterns. We argue that conclusions based on simulated network studies must focus on the full features of the connectivity patterns of a network instead of on the limited set of networkmetrics for a specific network type. This fact has important implications for network data analysis: for instance, implications related to the way significance is currently assessed.

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References
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Journal ArticleDOI

Random graph models of social networks

TL;DR: It is found that in some cases, the models are in remarkable agreement with the data, whereas in others the agreement is poorer, perhaps indicating the presence of additional social structure in the network that is not captured by the random graph.
Journal ArticleDOI

A Survey of Statistical Network Models

TL;DR: In this paper, the authors provide an overview of the historical development of statistical network modeling and then introduce a number of examples that have been studied in the network literature and their subsequent discussion focuses on some prominent static and dynamic network models and their interconnections.
Book

Connected: The Surprising Power of Our Social Networks and How They Shape Our Lives

TL;DR: This dissertation aims to provide a history of web exceptionalism from 1989 to 2002, a period chosen in order to explore its roots as well as specific cases up to and including the year in which descriptions of “Web 2.0” began to circulate.
Book

Statistical Analysis of Network Data: Methods and Models

TL;DR: This book provides an up-to-date treatment of the foundations common to the statistical analysis of network data across the disciplines, and is the first such resource to present material on all of these core topics in one place.