English

Addressing prior dependence in hierarchical Bayesian modeling for PTA data analysis I: Methodology and implementation

Instrumentation and Methods for Astrophysics 2025-11-06 v1 Cosmology and Nongalactic Astrophysics High Energy Astrophysical Phenomena Machine Learning

Abstract

Complex inference tasks, such as those encountered in Pulsar Timing Array (PTA) data analysis, rely on Bayesian frameworks. The high-dimensional parameter space and the strong interdependencies among astrophysical, pulsar noise, and nuisance parameters introduce significant challenges for efficient learning and robust inference. These challenges are emblematic of broader issues in decision science, where model over-parameterization and prior sensitivity can compromise both computational tractability and the reliability of the results. We address these issues in the framework of hierarchical Bayesian modeling by introducing a reparameterization strategy. Our approach employs Normalizing Flows (NFs) to decorrelate the parameters governing hierarchical priors from those of astrophysical interest. The use of NF-based mappings provides both the flexibility to realize the reparametrization and the tractability to preserve proper probability densities. We further adopt i-nessai, a flow-guided nested sampler, to accelerate exploration of complex posteriors. This unified use of NFs improves statistical robustness and computational efficiency, providing a principled methodology for addressing hierarchical Bayesian inference in PTA analysis.

Keywords

Cite

@article{arxiv.2511.03667,
  title  = {Addressing prior dependence in hierarchical Bayesian modeling for PTA data analysis I: Methodology and implementation},
  author = {Luigi D'amico and Eleonora Villa and Fatima Modica Bittordo and Aldo Barca and Francesco Alì and Massimo Meneghetti and Luca Naso},
  journal= {arXiv preprint arXiv:2511.03667},
  year   = {2025}
}

Comments

15 pages, 7 figures. Under review for Proceedings of International Summer Conference 2025: Intelligent Systems & Decision Making: Human Insights in the Era of A.I - Lecture Notes in Computer Science, Springer Nature

R2 v1 2026-07-01T07:23:12.831Z