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On the Large Sample Optimality of Sequential Designs for Comparing Two or More Treatments

机译:比较两个或多个处理的顺序设计的大样本最优性

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摘要

The present paper deals with optimal (in Kiefer's sense) response-adaptive designs for parametric inference on v ≥ 2 treatments. Sometimes (e.g., for nonlinear models) a sequential estimation procedure combined with an adaptive experiment suggests itself as the "natural" best design. One of the questions is whether, since we proceed sequentially, we should infer conditionally on the design. Another question is whether such an adaptive design is really optimal for the chosen type of inference. The main purpose of this paper is to give proofs of the asymptotic optimality for inferring both conditionally and unconditionally of a large class of such designs, incorporating response-adaptive randomization as well. The asymptotic optimality of the Maximum Likelihood design, namely that based on the step-by-step updating of the parameter estimates by maximum likelihood, is proved for responses belonging to the exponential family. Under this procedure the MLEs retain the strong consistency and asymptotical normality properties. Furthermore, such properties still hold approximately for suitable inverse sampling stopping rules.
机译:本文讨论了针对v≥2处理的最优(根据Kiefer的意义)参数响应的自适应设计。有时(例如,对于非线性模型),顺序估算程序与自适应实验相结合,会表明自己是“自然”的最佳设计。问题之一是,由于我们要按顺序进行,因此是否应该有条件地推断设计。另一个问题是,这种自适应设计对于选择的推理类型是否真的最佳。本文的主要目的是提供渐进最优性的证明,以证明有条件的和无条件的这类设计的大类,还包括响应自适应的随机性。对于属于指数族的响应,证明了最大似然设计的渐近最优性,即基于最大似然对参数估计值进行逐步更新的最优性。在此过程中,MLE保留了很强的一致性和渐近正态性。此外,对于适当的逆采样停止规则,这些属性仍然大致保持不变。

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