A general framework with a series of different methods is proposed to improve the estimate of convex function (or functional) values when only noisy observations of the true input are available. Technically, our methods catch the bias introduced by the convexity and remove this bias from a baseline estimate. Theoretical analysis are conducted to show that the proposed methods can strictly reduce the expected estimate error under mild conditions. When applied, the methods require no specific knowledge about the problem except the convexity and the evaluation of the function. Therefore, they can serve as off-the-shelf tools to obtain good estimate for a wide range of problems, including optimization problems with random objective functions or constraints, and functionals of probability distributions such as the entropy and the Wasserstein distance. Numerical experiments on a wide variety of problems show that our methods can significantly improve the quality of the estimate compared with the baseline method.
翻译:提出一个总框架,其中提出一系列不同的方法,以便在只有对真实输入进行噪音观测时,改进对曲线函数(或功能)值的估计,从技术上讲,我们的方法会抓住曲线偏差带来的偏差,从基线估计中消除这种偏差。进行理论分析,以表明拟议的方法能够在温和的条件下严格减少预期估计错误。应用这些方法时,除了对函数的细化和评估外,不需要对问题有具体了解。因此,这些方法可以作为现成的工具,对一系列广泛的问题,包括随机客观功能或限制的优化问题,以及诸如环球和瓦塞尔斯坦距离等概率分布的功能,获得准确的估计。关于各种问题的数值实验表明,与基线方法相比,我们的方法可以大大改进估计数的质量。