scispace - formally typeset
Open AccessJournal ArticleDOI

Estimating and understanding exponential random graph models

Sourav Chatterjee, +1 more
- 01 Oct 2013 - 
- Vol. 41, Iss: 5, pp 2428-2461
Reads0
Chats0
TLDR
In this paper, the authors introduce a method for the theoretical analysis of exponential random graph models based on a large deviation approximation to the normalizing constant shown to be consistent using theory developed by Chatterjee and Varadhan [European J. Combin. 32 (2011) 1000-1017].
Abstract
We introduce a method for the theoretical analysis of exponential random graph models. The method is based on a large-deviations approximation to the normalizing constant shown to be consistent using theory developed by Chatterjee and Varadhan [European J. Combin. 32 (2011) 1000–1017]. The theory explains a host of difficulties encountered by applied workers: many distinct models have essentially the same MLE, rendering the problems “practically” ill-posed. We give the first rigorous proofs of “degeneracy” observed in these models. Here, almost all graphs have essentially no edges or are essentially complete. We supplement recent work of Bhamidi, Bresler and Sly [2008 IEEE 49th Annual IEEE Symposium on Foundations of Computer Science (FOCS) (2008) 803–812 IEEE] showing that for many models, the extra sufficient statistics are useless: most realizations look like the results of a simple Erdős–Renyi model. We also find classes of models where the limiting graphs differ from Erdős–Renyi graphs. A limitation of our approach, inherited from the limitation of graph limit theory, is that it works only for dense graphs.

read more

Content maybe subject to copyright    Report

Citations
More filters
Journal ArticleDOI

GLMLE: graph-limit enabled fast computation for fitting exponential random graph models to large social networks

TL;DR: A new theoretical framework for estimating the parameters of ERGMs by approximating the normalizing constant using the emerging tools in graph theory—graph limits is proposed and a complete computational procedure built upon their results is constructed which is fast and able to scale to large networks.
Journal ArticleDOI

Locally adaptive dynamic networks

TL;DR: In this article, the authors develop a locally adaptive DYnamic (LADY) network inference method based on a dynamic latent space representation in which each actor's position evolves in time via stochastic differential equations.
Journal ArticleDOI

Differential calculus on graphon space

TL;DR: This paper develops a theory of series expansions, including Taylor's theorem for graph parameters and a uniqueness principle for series, and explains the central role that homomorphism densities play in the analysis of graphons, by way of a new combinatorial interpretation of their derivatives.
Posted Content

Universal Limit Theorems in Graph Coloring Problems With Connections to Extremal Combinatorics

TL;DR: In this paper, it was shown that if the number of colors grows to infinity, the asymptotic distribution is either a Poisson mixture or a Normal depending solely on the limiting behavior of the ratio of the size of the edges in the graph and the numberof colors.
Journal ArticleDOI

Dynamic stochastic block models: parameter estimation and detection of changes in community structure

TL;DR: An autoregressive extension of the stochastic block model, based on continuous-time Markovian edge dynamics, is introduced, appropriate for networks evolving over time and allows for edges to turn on and off.
References
More filters
Book

Social Network Analysis: Methods and Applications

TL;DR: This paper presents mathematical representation of social networks in the social and behavioral sciences through the lens of Dyadic and Triadic Interaction Models, which describes the relationships between actor and group measures and the structure of networks.
Journal ArticleDOI

A Stochastic Approximation Method

TL;DR: In this article, a method for making successive experiments at levels x1, x2, ··· in such a way that xn will tend to θ in probability is presented.
Journal ArticleDOI

Statistical Analysis of Non-Lattice Data

TL;DR: In this article, a fixed system of n sites, labelled by the first n positive integers, and an associated vector x of observations, Xi,..., Xn, which, in turn, is assumed to be a realization of a vector X of (dependent) random variables, Xi,.., Xn, X.. In practice the sites may represent points or regions in space and the random variables may be either continuous or discrete.
Journal ArticleDOI

An Exponential Family of Probability Distributions for Directed Graphs

TL;DR: An exponential family of distributions that can be used for analyzing directed graph data is described, and several special cases are discussed along with some possible substantive interpretations.
Related Papers (5)
Trending Questions (1)
What are the advantages and disadvantages of exponential random graph models?

Advantages: Provides a theoretical analysis method. Disadvantages: Works only for dense graphs.