This paper derives confidence intervals (CI) and time-uniform confidence sequences (CS) for the classical problem of estimating an unknown mean from bounded observations. We present a general approach for deriving concentration bounds, that can be seen as a generalization and improvement of the celebrated Chernoff method. At its heart, it is based on a class of composite nonnegative martingales, with strong connections to testing by betting and the method of mixtures. We show how to extend these ideas to sampling without replacement, another heavily studied problem. In all cases, our bounds are adaptive to the unknown variance, and empirically vastly outperform existing approaches based on Hoeffding or empirical Bernstein inequalities and their recent supermartingale generalizations. In short, we establish a new state-of-the-art for four fundamental problems: CSs and CIs for bounded means, when sampling with and without replacement.
翻译:本文针对从受约束的观测中估算一个未知值的典型问题,得出了信任间隔(CI)和时间统一信任序列(CS),用于估算从受约束的观测中得出一个未知值的典型问题。我们提出了一个得出浓度界限的一般方法,这可以被视为对庆祝的Chernoff方法的概括化和改进。在文件的心脏上,它基于一组复合的非阴性马丁格,与赌注和混合物方法的测试有着密切的联系。我们展示了如何将这些想法扩大到取样而不替换,这是另一个经过大量研究的问题。在所有情况下,我们的界限都适应了未知的差异,在经验上大大超越了基于Hoffding或经验性Bernstein不平等及其最近超marting一般化的现有方法。简而言之,我们为四个基本问题建立了一个新的状态:CS和CI作为约束手段,在取样时和不替换时。