Random Graphs with Prescribed $K$-Core Sequences: A New Null Model for Network Analysis
Katherine Van Koevering, Austin R. Benson, Jon Kleinberg

TL;DR
This paper introduces a novel null model for network analysis based on the $k$-core decomposition, enabling the generation of random graphs with the same core number sequence as a given network, thus preserving more structural properties.
Contribution
It proposes the first efficient sampling algorithm for generating nearly uniform random graphs with a prescribed core number sequence, enhancing network comparison methods.
Findings
Enables comparison of real networks with core-preserving random graphs.
Improves motif enumeration by using core-based null models.
Provides a new tool for structural network analysis.
Abstract
In the analysis of large-scale network data, a fundamental operation is the comparison of observed phenomena to the predictions provided by null models: when we find an interesting structure in a family of real networks, it is important to ask whether this structure is also likely to arise in random networks with similar characteristics to the real ones. A long-standing challenge in network analysis has been the relative scarcity of reasonable null models for networks; arguably the most common such model has been the configuration model, which starts with a graph and produces a random graph with the same node degrees as . This leads to a very weak form of null model, since fixing the node degrees does not preserve many of the crucial properties of the network, including the structure of its subgraphs. Guided by this challenge, we propose a new family of network null models that…
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