We propose a general method for constructing hypothesis tests and confidence sets that have finite sample guarantees without regularity conditions. We refer to such procedures as "universal." The method is very simple and is based on a modified version of the usual likelihood ratio statistic, that we call "the split likelihood ratio test" (split LRT). The method is especially appealing for irregular statistical models. Canonical examples include mixture models and models that arise in shape-constrained inference. Constructing tests and confidence sets for such models is notoriously difficult. Typical inference methods, like the likelihood ratio test, are not useful in these cases because they have intractable limiting distributions. In contrast, the method we suggest works for any parametric model and also for some nonparametric models. The split LRT can also be used with profile likelihoods to deal with nuisance parameters, and it can also be run sequentially to yield anytime-valid $p$-values and confidence sequences.
翻译:我们提出了一种通用方法,用于构建假设测试和信心组,这些假设测试和信心组具有不受常规性条件限制的有限样本保障。我们称之为“通用”程序。这种方法非常简单,基于一个修改版的通常概率比率统计,我们称之为“不同概率比测试 ” ( Split LRT ) 。这种方法特别吸引非常规统计模型。典型的例子包括组合模型和在受形状限制的误判中产生的模型。为这些模型构建测试和信心组非常困难。典型的推论方法,如概率比测试,在这些案例中没有用处,因为它们具有难以控制的限制性分布。相比之下,我们建议的方法是对任何参数模型和一些非参数模型起作用。分裂 LRT也可以与剖析性可能性一起使用,处理扰动参数,还可以按顺序运行,产生随时有效的美元价值和信心序列。