Riemannian manifold Hamiltonian (RMHMC) and Lagrangian Monte Carlo (LMC) have emerged as powerful methods of Bayesian inference. Unlike Euclidean Hamiltonian Monte Carlo (EHMC) and the Metropolis-adjusted Langevin algorithm (MALA), the geometric ergodicity of these Riemannian algorithms has not been extensively studied. On the other hand, the manifold Metropolis-adjusted Langevin algorithm (MMALA) has recently been shown to exhibit geometric ergodicity under certain conditions. This work investigates the mixture of the LMC and RMHMC transition kernels with MMALA in order to equip the resulting method with an "inherited" geometric ergodicity theory. We motivate this mixture kernel based on an analogy between single-step HMC and MALA. We then proceed to evaluate the original and modified transition kernels on several benchmark Bayesian inference tasks.
翻译:与欧洲大陆汉密尔顿山蒙特卡洛(EUclidean Hamiltonian Monte Carlo)和大都市调整的朗埃文算法(MALA)不同,这些里曼尼人算法的几何异性尚未广泛研究。另一方面,最近显示多大都市调整的朗埃文算法(MMMALA)在某些条件下显示出了几何异性。这项工作调查了LMC和RMHC过渡核心圈与MMALA的混合,以便用“遗传”几何异性理论来装备所产生的方法。我们根据单步HMC和MALA之间的类比,激发了这种混合物的内核。我们接着根据几个基准贝耶斯推断任务评估原始和修改的过渡核心。