Bayesian Matrix Completion Under Geometric Constraints
Abstract
The completion of a Euclidean distance matrix (EDM) from sparse and noisy observations is a fundamental challenge in signal processing, with applications in sensor network localization, acoustic room reconstruction, molecular conformation, and manifold learning. Traditional approaches, such as rank-constrained optimization and semidefinite programming, enforce geometric constraints but often struggle under sparse or noisy conditions. This paper introduces a hierarchical Bayesian framework that places structured priors directly on the latent point set generating the EDM, naturally embedding geometric constraints. By incorporating a hierarchical prior on latent point set, the model enables automatic regularization and robust noise handling. Posterior inference is performed using a Metropolis-Hastings within Gibbs sampler to handle coupled latent point posterior. Experiments on synthetic data demonstrate improved reconstruction accuracy compared to deterministic baselines in sparse regimes.
Keywords
Cite
@article{arxiv.2601.22765,
title = {Bayesian Matrix Completion Under Geometric Constraints},
author = {Rohit Varma Chiluvuri and Santosh Nannuru},
journal= {arXiv preprint arXiv:2601.22765},
year = {2026}
}
Comments
4 pages, 3 figures, Accepted to ICASSP 2026