JMLR

Latent Process Models for Functional Network Data

Authors
Peter W. MacDonald Ji Zhu Elizaveta Levina
Paper Information
  • Journal:
    Journal of Machine Learning Research
  • Added to Tracker:
    Sep 08, 2025
Abstract

Network data are often sampled with auxiliary information or collected through the observation of a complex system over time, leading to multiple network snapshots indexed by a continuous variable. Many methods in statistical network analysis are traditionally designed for a single network, and can be applied to an aggregated network in this setting, but that approach can miss important functional structure. Here we develop an approach to estimating the expected network explicitly as a function of a continuous index, be it time or another indexing variable. We parameterize the network expectation through low dimensional latent processes, whose components we represent with a fixed, finite-dimensional functional basis. We derive a gradient descent estimation algorithm, establish theoretical guarantees for recovery of the low dimensional structure, compare our method to competitors, and apply it to a data set of international political interactions over time, showing our proposed method to adapt well to data, outperform competitors, and provide interpretable and meaningful results.

Author Details
Peter W. MacDonald
Author
Ji Zhu
Author
Elizaveta Levina
Author
Citation Information
APA Format
Peter W. MacDonald , Ji Zhu & Elizaveta Levina . Latent Process Models for Functional Network Data. Journal of Machine Learning Research .
BibTeX Format
@article{paper508,
  title = { Latent Process Models for Functional Network Data },
  author = { Peter W. MacDonald and Ji Zhu and Elizaveta Levina },
  journal = { Journal of Machine Learning Research },
  url = { https://www.jmlr.org/papers/v26/23-0444.html }
}