Random-Walk Models of Network Formation and Sequential Monte Carlo Methods for Graphs

Abstract

We introduce a class of generative network models that insert edges by connecting the starting and terminal vertices of a random walk on the network graph. Within the taxonomy of statistical network models, this class is distinguished by permitting the location of a new edge to depend explicitly on the structure of the graph, but being nonetheless statistically and computationally tractable. In the limit of infinite walk length, the model converges to an extension of the preferential attachment model—in this sense, it can be motivated alternatively by asking what preferential attachment is an approximation to. Theoretical properties, including the limiting degree sequence, are studied analytically. If the entire history of the graph is observed, parameters can be estimated by maximum likelihood. If only the final graph is available, its history can be imputed by using Markov chain Monte Carlo methods. We develop a class of sequential Monte Carlo algorithms that are more generally applicable to sequential network models and may be of interest in their own right. The model parameters can be recovered from a single graph generated by the model. Applications to data clarify the role of the random-walk length as a length scale of interactions within the graph.

Document Details

Document Type
Pub Defense Publication
Publication Date
Aug 26, 2018
Source ID
10.1111/rssb.12289

Entities

People

  • Benjamin Bloem-reddy
  • Peter Orbanz

Organizations

  • Air Force Office of Scientific Research
  • Columbia University
  • European Research Council
  • Seventh Framework Programme
  • University of Oxford

Tags

Fields of Study

  • Mathematics

Readers

  • Fluid Mechanics and Fluid Dynamics.
  • Statistical inference.
  • Theoretical Analysis.