Riemannian Langevin Monte Carlo schemes for sampling PSD matrices with fixed rank
Abstract: This paper introduces two explicit schemes to sample matrices from Gibbs distributions on $\mathcal S{n,p}_+$, the manifold of real positive semi-definite (PSD) matrices of size $n\times n$ and rank $p$. Given an energy function $\mathcal E:\mathcal S{n,p}_+\to \mathbb{R}$ and certain Riemannian metrics $g$ on $\mathcal S{n,p}_+$, these schemes rely on an Euler-Maruyama discretization of the Riemannian Langevin equation (RLE) with Brownian motion on the manifold. We present numerical schemes for RLE under two fundamental metrics on $\mathcal S{n,p}_+$: (a) the metric obtained from the embedding of $\mathcal S{n,p}_+ \subset \mathbb{R}{n\times n} $; and (b) the Bures-Wasserstein metric corresponding to quotient geometry. We also provide examples of energy functions with explicit Gibbs distributions that allow numerical validation of these schemes.
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