Importance sampling of target probability distributions belonging to a given convex class is considered. Motivated by previous results, the cost of importance sampling is quantified using the relative entropy of the target with respect to proposal distributions. Using a reference measure as a reference for cost, we prove under some general conditions that the worst-case optimal proposal is precisely given by the distribution minimizing entropy with respect to the reference within the considered convex class of distributions. The latter conditions are in particular satisfied when the convex class is defined using a push-forward map defining atomless conditional measures. Applications in which the optimal proposal is Gibbsian and can be practically sampled using Monte Carlo methods are discussed.
翻译:考虑对属于某一 convex 类别的目标概率分布进行重要取样; 以先前的结果为动力,对重要取样的成本进行量化,使用建议分布方面目标的相对酶值进行量化; 以一个参考措施作为成本参考,在某些一般条件下,我们证明最坏情况最佳提案的准确性是,在所考虑的 convex 类分配中,对参考的分布的最小化 ; 后一种条件特别符合以下条件:在确定 convex 类别时,使用推向地图界定无穷无尽条件措施; 讨论最佳提案是Gibbian, 并且可以使用Monte Carlo 方法实际抽样的应用程序。