Chain-referral sampling on stochastic block models
ESAIM: Probability and Statistics, Tome 24 (2020), pp. 718-738.

The discovery of the “hidden population”, whose size and membership are unknown, is made possible by assuming that its members are connected in a social network by their relationships. We explore these groups by a chain-referral sampling (CRS) method, where participants recommend the people they know. This leads to the study of a Markov chain on a random graph where vertices represent individuals and edges connecting any two nodes describe the relationships between corresponding people. We are interested in the study of CRS process on the stochastic block model (SBM), which extends the well-known Erdös-Rényi graphs to populations partitioned into communities. The SBM considered here is characterized by a number of vertices N, a number of communities (blocks) m, proportion of each community π = (π1, …, π$$) and a pattern for connection between blocks P = (λ$$N)$$. In this paper, we give a precise description of the dynamic of CRS process in discrete time on an SBM. The difficulty lies in handling the heterogeneity of the graph. We prove that when the population’s size is large, the normalized stochastic process of the referral chain behaves like a deterministic curve which is the unique solution of a system of ODEs.

DOI : 10.1051/ps/2020025
Classification : 05C80, 60J05, 60F17, 90B15, 92D30, 91D30
Mots-clés : Chain-referral sampling, random graph, social network, stochastic block model, exploration process, large graph limit, respondent driven sampling
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Vo, Thi Phuong Thuy. Chain-referral sampling on stochastic block models. ESAIM: Probability and Statistics, Tome 24 (2020), pp. 718-738. doi : 10.1051/ps/2020025. http://www.numdam.org/articles/10.1051/ps/2020025/

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Cité par Sources :

This work was done during the Ph.D. thesis of the author under the supervision of Jean-Stéphane Dhersin and Tran Viet Chi. The author was partially supported by the Chaire MMB (Modélisation Mathématique et Biodiversité of Veolia-Ecole Polytechnique-Museum National d’Histoire Naturelle-Fondation X) and by the ANR Econet (ANR-18-CE02-0010).