English

Metropolis-Hastings Sampling Using Multivariate Gaussian Tangents

Methodology 2013-08-06 v1

Abstract

We present MH-MGT, a multivariate technique for sampling from twice-differentiable, log-concave probability density functions. MH-MGT is Metropolis-Hastings sampling using asymmetric, multivariate Gaussian proposal functions constructed from Taylor-series expansion of the log-density function. The mean of the Gaussian proposal function represents the full Newton step, and thus MH-MGT is the stochastic counterpart to Newton optimization. Convergence analysis shows that MH-MGT is well suited for sampling from computationally-expensive log-densities with contributions from many independent observations. We apply the technique to Gibbs sampling analysis of a Hierarchical Bayesian marketing effectiveness model built for a large US foodservice distributor. Compared to univariate slice sampling, MH-MGT shows 6x improvement in sampling efficiency, measured in terms of `function evaluation equivalents per independent sample'. To facilitate wide applicability of MH-MGT to statistical models, we prove that log-concavity of a twice-differentiable distribution is invariant with respect to 'linear-projection' transformations including, but not restricted to, generalized linear models.

Keywords

Cite

@article{arxiv.1308.0657,
  title  = {Metropolis-Hastings Sampling Using Multivariate Gaussian Tangents},
  author = {Alireza S. Mahani and Mansour T. A. Sharabiani},
  journal= {arXiv preprint arXiv:1308.0657},
  year   = {2013}
}
R2 v1 2026-06-22T01:03:19.375Z