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 -DPP defined on a -dimensional domain by only taking number of steps. As an application, we design an algorithm to generate random samples from -DPPs defined by a spherical Gaussian kernel on a unit sphere in -dimensions, in time polynomial in .
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