Nonlinear MCMC for Bayesian Machine Learning
–Neural Information Processing Systems
We explore the application of a nonlinear MCMC technique first introduced in [1] to problems in Bayesian machine learning. We provide a convergence guarantee in total variation that uses novel results for long-time convergence and large-particle ( propagation of chaos'') convergence. We apply this nonlinear MCMC technique to sampling problems including a Bayesian neural network on CIFAR10.
Neural Information Processing Systems
Jan-18-2025, 16:07:29 GMT
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