In this paper, we study the long-time convergence and uniform strong propagation of chaos for a class of nonlinear Markov chains for Markov chain Monte Carlo (MCMC). Our technique is quite simple, making use of recent contraction estimates for linear Markov kernels and basic techniques from Markov theory and analysis. Moreover, the same proof strategy applies to both the long-time convergence and propagation of chaos. We also show, via some experiments, that these nonlinear MCMC techniques are viable for use in real-world high-dimensional inference such as Bayesian neural networks.
翻译:在本文中,我们研究了非线性马可夫链(Markov listle Monte Carlo)非线性马可夫链条的混乱长期趋同和统一强烈传播。我们的技术很简单,利用最近对线性马可夫内核的收缩估计以及Markov理论和分析的基本技术。此外,同样的证明战略也适用于长期趋同和混乱的蔓延。我们还通过一些实验表明,这些非线性马可夫链条技术在现实世界高维推论中(比如Bayesian神经网络)是可行的。