Author:
Antunes Nelson,Banerjee Sayan,Bhamidi Shankar,Pipiras Vladas
Abstract
AbstractWe investigate the statistical learning of nodal attribute functionals in homophily networks using random walks. Attributes can be discrete or continuous. A generalization of various existing canonical models, based on preferential attachment is studied (model class $$\mathscr {P}$$
P
), where new nodes form connections dependent on both their attribute values and popularity as measured by degree. An associated model class $$\mathscr {U}$$
U
is described, which is amenable to theoretical analysis and gives access to asymptotics of a host of functionals of interest. Settings where asymptotics for model class $$\mathscr {U}$$
U
transfer over to model class $$\mathscr {P}$$
P
through the phenomenon of resolvability are analyzed. For the statistical learning, we consider several canonical attribute agnostic sampling schemes such as Metropolis-Hasting random walk, versions of node2vec (Grover and Leskovec, 2016) that incorporate both classical random walk and non-backtracking propensities and propose new variants which use attribute information in addition to topological information to explore the network. Estimators for learning the attribute distribution, degree distribution for an attribute type and homophily measures are proposed. The performance of such statistical learning framework is studied on both synthetic networks (model class $$\mathscr {P}$$
P
) and real world systems, and its dependence on the network topology, degree of homophily or absence thereof, (un)balanced attributes, is assessed.
Publisher
Springer Science and Business Media LLC
Subject
Computational Mathematics,Computer Networks and Communications,Multidisciplinary
Reference42 articles.
1. Aldous D, Fill J.A (2002) Reversible Markov Chains and Random Walks on Graphs. Unfinished monograph, recompiled 2014 http://www.stat.berkeley.edu/~aldous/RWG/book.html
2. Antunes N, Banerjee S, Bhamidi S, Pipiras V (2023a) Attribute network models, stochastic approximation, and network sampling and ranking. Preprint arXiv:2304.08565v1
3. Antunes N, Bhamidi S, Pipiras V (2023b) Learning attribute distributions through random walks. In: Cherifi H, Mantegna RN, Rocha LM, Cherifi C, Micciche S (eds) Complex networks and their applications XI. Springer, Cham, pp 17–29
4. Antunes N, Bhamidi S, Guo T, Pipiras V, Wang B (2021a) Sampling based estimation of in-degree distribution for directed complex networks. J Comput Gr Stat 30(4):863–876
5. Antunes N, Guo T, Pipiras V (2021b) Sampling methods and estimation of triangle count distributions in large networks. Netw Sci 9:134–156
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