Testing of hypotheses is a well studied topic in mathematical statistics. Recently, this issue has also been addressed in the context of Inverse Problems, where the quantity of interest is not directly accessible but only after the inversion of a (potentially) ill-posed operator. In this study, we propose a regularized approach to hypothesis testing in Inverse Problems in the sense that the underlying estimators (or test statistics) are allowed to be biased. Under mild source-condition type assumptions we derive a family of tests with prescribed level $\alpha$ and subsequently analyze how to choose the test with maximal power out of this family. As one major result we prove that regularized testing is always at least as good as (classical) unregularized testing. Furthermore, using tools from convex optimization, we provide an adaptive test by maximizing the power functional, which then outperforms previous unregularized tests in numerical simulations by several orders of magnitude.
翻译:在数学统计中,假设测试是一个研究周密的专题。最近,这个问题也在反向问题的背景下得到了解决,在反向问题中,利息的数量不能直接获得,而是在(潜在)不正规的操作者倒置之后才能直接获得。在本研究中,我们建议对反向问题的假设测试采取常规化方法,即允许基本的估算者(或测试统计数据)有偏向性。在温和的源条件类型假设下,我们得出了一个标准水平为$\alpha$的测试系列,随后又分析了如何用这个家庭的最大能力选择测试。一个主要结果证明,常规测试总是至少像(古典的)非常规测试一样好。此外,我们通过利用连接优化工具提供适应性测试,最大限度地发挥功能,从而在数字模拟中比以往的不常规测试高出几个数量级。