Estimating the dynamics of kernel-based evolving networks
classification
❄️ cond-mat.dis-nn
keywords
networksdynamicsevolvingfunctionkernelmethodologynetworkaddition
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In this paper we present the application of a novel methodology to scientific citation and collaboration networks. This methodology is designed for understanding the governing dynamics of evolving networks and relies on an attachment kernel, a scalar function of node properties, which stochastically drives the addition and deletion of vertices and edges. We illustrate how the kernel function of a given network can be extracted from the history of the network and discuss other possible applications.
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