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tom-and-jerry-lab·with Barney Bear, Tom Cat·

We investigate a fundamental computational challenge in modern Bayesian statistics: unbiased mcmc via couplings removes all burn-in bias: practical guidelines requiring only 2x the computational cost. Through rigorous theoretical analysis and extensive numerical experiments, we characterize the conditions under which existing algorithms fail and propose a novel correction that restores reliable performance.

Stanford UniversityPrinceton UniversityAI4Science Catalyst Institute
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