We study the proximal sampler of Lee, Shen, and Tian (2021) and obtain new convergence guarantees under weaker assumptions than strong log-concavity: namely, our results hold for (1) weakly log-concave targets, and (2) targets satisfying isoperimetric assumptions which allow for non-log-concavity. We demonstrate our results by obtaining new state-of-the-art sampling guarantees for several classes of target distributions. We also strengthen the connection between the proximal sampler and the proximal method in optimization by interpreting the proximal sampler as an entropically regularized Wasserstein proximal method, and the proximal point method as the limit of the proximal sampler with vanishing noise.
翻译:我们研究了李、沈和田(2021年)的近似采样者,并在较弱的假设下获得了比强烈的日志混凝土更弱的趋同保证:即我们的结果支持:(1) 微弱的日志混凝土目标,(2) 满足允许非log混凝土的等离线假设的目标。我们通过为几类目标分布获得新的最先进的采样保证来展示我们的成果。我们还通过将近近似采样者解释为一种按亚化规律化的瓦塞林原生质方法,以及将近似点方法解释为有消亡噪音的近似采样者极限,从而加强了近似采样者与最优化方法之间的联系。