While the Metropolis Adjusted Langevin Algorithm (MALA) is a popular and widely used Markov chain Monte Carlo method, very few papers derive conditions that ensure its convergence. In particular, to the authors' knowledge, assumptions that are both easy to verify and guarantee geometric convergence, are still missing. In this work, we establish $V$-uniformly geometric convergence for MALA under mild assumptions about the target distribution. Unlike previous work, we only consider tail and smoothness conditions for the potential associated with the target distribution. These conditions are quite common in the MCMC literature and are easy to verify in practice. Finally, we pay special attention to the dependence of the bounds we derive on the step size of the Euler-Maruyama discretization, which corresponds to the proposal Markov kernel of MALA.
翻译:虽然大都会调整Langevin Algorithm(MALA)是流行和广泛使用的Markov连锁公司Monte Carlo(MALA)方法,但很少有论文提出能够确保其趋同的条件,特别是据作者所知,很容易核实和保证几何趋同的假设仍然缺失,在这项工作中,我们根据目标分布的轻度假设为MALA确定了美元-美元-统一几何趋同。与以往的工作不同,我们只考虑与目标分布有关的潜力的尾巴和顺畅条件。这些条件在MCMC的文献中非常常见,而且在实践中很容易核实。最后,我们特别注意我们从Euler-Maruyama离散的阶梯尺寸上得出的界限的依赖性,这与MALA的Markov内核建议相对应。