Scalable Approximate Bayesian Computation for Growing Network Models via Extrapolated and Sampled Summaries
Louis Raynal, Sixing Chen, Antonietta Mira, Jukka-Pekka Onnela

TL;DR
This paper introduces scalable methods for Approximate Bayesian Computation (ABC) to efficiently infer parameters in large growing network models by extrapolating summaries and using sampled statistics, reducing computational costs.
Contribution
It proposes two novel techniques—extrapolating summary statistics and employing sampled summaries—to make ABC feasible for large-scale network growth models.
Findings
Extrapolated summaries closely match actual large network summaries.
Sampled summaries significantly reduce computation time.
The proposed methods produce posterior estimates similar to standard ABC.
Abstract
Approximate Bayesian computation (ABC) is a simulation-based likelihood-free method applicable to both model selection and parameter estimation. ABC parameter estimation requires the ability to forward simulate datasets from a candidate model, but because the sizes of the observed and simulated datasets usually need to match, this can be computationally expensive. Additionally, since ABC inference is based on comparisons of summary statistics computed on the observed and simulated data, using computationally expensive summary statistics can lead to further losses in efficiency. ABC has recently been applied to the family of mechanistic network models, an area that has traditionally lacked tools for inference and model choice. Mechanistic models of network growth repeatedly add nodes to a network until it reaches the size of the observed network, which may be of the order of millions of…
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