Duncan A B, Lelièvre T, Pavliotis G A
Department of Mathematics, South Kensington Campus, Imperial College London, London, SW7 2AZ England.
CERMICS, Ecole des ponts, Universit Paris-Est, 6-8 avenue Blaise Pascal, 77455 Marne la Valle Cedex 2, France.
J Stat Phys. 2016;163:457-491. doi: 10.1007/s10955-016-1491-2. Epub 2016 Mar 22.
A standard approach to computing expectations with respect to a given target measure is to introduce an overdamped Langevin equation which is reversible with respect to the target distribution, and to approximate the expectation by a time-averaging estimator. As has been noted in recent papers [30, 37, 61, 72], introducing an appropriately chosen nonreversible component to the dynamics is beneficial, both in terms of reducing the asymptotic variance and of speeding up convergence to the target distribution. In this paper we present a detailed study of the dependence of the asymptotic variance on the deviation from reversibility. Our theoretical findings are supported by numerical simulations.
一种针对给定目标测度计算期望的标准方法是引入一个关于目标分布可逆的过阻尼朗之万方程,并通过时间平均估计器来近似期望。正如最近的论文[30, 37, 61, 72]所指出的,在动力学中引入适当选择的不可逆分量是有益的,这在降低渐近方差以及加速收敛到目标分布方面都有好处。在本文中,我们对渐近方差与可逆性偏差之间的依赖性进行了详细研究。我们的理论发现得到了数值模拟的支持。