English

A Data Driven Bayesian Graphical Ridge Estimator

Methodology 2022-10-31 v1

Abstract

Bayesian methodologies prioritising accurate associations above sparsity in Gaussian graphical model (GGM) estimation remain relatively scarce in scientific literature. It is well accepted that the 2\ell_2 penalty enjoys a smaller computational footprint in GGM estimation, whilst the 1\ell_1 penalty encourages sparsity in the estimand. The Bayesian adaptive graphical lasso prior is used as a departure point in the formulation of a computationally efficient graphical ridge-type prior for events where accurate associations are prioritised over sparse representations. A novel block Gibbs sampler for simulating precision matrices is constructed using a ridge-type penalisation. The Bayesian graphical ridge-type prior is extended to a Bayesian adaptive graphical ridge-type prior. Synthetic experiments indicate that the graphical ridge-type estimators enjoy computational efficiency, in moderate dimensions, and numerical performance, for relatively non-sparse precision matrices, when compared to their lasso counterparts. The adaptive graphical ridge-type estimator is applied to cell signaling data to infer key associations between phosphorylated proteins in human T cell signalling. All computational workloads are carried out using the baygel R package.

Keywords

Cite

@article{arxiv.2210.16290,
  title  = {A Data Driven Bayesian Graphical Ridge Estimator},
  author = {J. Smith and M. Arashi and A. Bekker},
  journal= {arXiv preprint arXiv:2210.16290},
  year   = {2022}
}

Comments

17 pages, 3 figures, 4 tables