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A Polynomial Time MCMC Method for Sampling from Continuous DPPs

20 October 2018
S. Gharan
A. Rezaei
ArXiv (abs)PDFHTML
Abstract

We study the Gibbs sampling algorithm for continuous determinantal point processes. We show that, given a warm start, the Gibbs sampler generates a random sample from a continuous kkk-DPP defined on a ddd-dimensional domain by only taking poly(k)\text{poly}(k)poly(k) number of steps. As an application, we design an algorithm to generate random samples from kkk-DPPs defined by a spherical Gaussian kernel on a unit sphere in ddd-dimensions, Sd−1\mathbb{S}^{d-1}Sd−1 in time polynomial in k,dk,dk,d.

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