Attribute network models, stochastic approximation, and network sampling and ranking algorithms
Abstract
We analyze dynamic random network models where younger vertices connect to older ones with probabilities proportional to their degrees as well as a propensity kernel governed by their attribute types. Using stochastic approximation techniques we show that, in the large network limit, such networks converge in the local weak sense to limiting infinite random trees with an explicit description in terms of randomly stopped multi-type branching processes. This allows for the derivation of asymptotics for a wide class of network functionals implying, for example, that while degree distribution tail exponents depend on the attribute type (already derived by Jordan (2013)), PageRank centrality scores have the same tail exponent across attributes. The limit results also give explicit formulae for the performance of various network sampling mechanisms. One surprising consequence is the efficacy of PageRank and walk based network sampling schemes for directed networks in the setting of rare minorities.
Cite
@article{arxiv.2304.08565,
title = {Attribute network models, stochastic approximation, and network sampling and ranking algorithms},
author = {Nelson Antunes and Sayan Banerjee and Shankar Bhamidi and Vladas Pipiras},
journal= {arXiv preprint arXiv:2304.08565},
year = {2025}
}
Comments
51 pages. To appear in Ann. Appl. Probab