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A Bayesian approach to out-of-sample network reconstruction

Author

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  • Mattia Marzi
  • Tiziano Squartini

Abstract

Networks underpin systems that range from finance to biology, yet their structure is often only partially observed. Current reconstruction methods typically fit the parameters of a model anew to each snapshot, thus offering no guidance to predict future configurations. Here, we develop a Bayesian approach that uses the information about past network snapshots to inform a prior and predict the subsequent ones, while quantifying uncertainty. Instantiated with a single-parameter fitness model, our method infers link probabilities from node strengths and carries information forward in time. When applied to the Electronic Market for Interbank Deposit across the years 1999-2012, our method accurately recovers the number of connections per bank at subsequent times, outperforming probabilistic benchmarks designed for analogous, link prediction tasks. Notably, each predicted snapshot serves as a reliable prior for the next one, thus enabling self-sustained, out-of-sample reconstruction of evolving networks with a minimal amount of additional data.

Suggested Citation

  • Mattia Marzi & Tiziano Squartini, 2026. "A Bayesian approach to out-of-sample network reconstruction," Papers 2602.21869, arXiv.org.
  • Handle: RePEc:arx:papers:2602.21869
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    File URL: http://arxiv.org/pdf/2602.21869
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