期刊
STATISTICAL SCIENCE
卷 29, 期 2, 页码 227-239出版社
INST MATHEMATICAL STATISTICS
DOI: 10.1214/13-STS457
关键词
Birnbaumization; likelihood principle (weak and strong); sampling theory; sufficiency; weak conditionality
An essential component of inference based on familiar frequentist notions, such as p-values, significance and confidence levels, is the relevant sampling distribution. This feature results in violations of a principle known as the strong likelihood principle (SLP), the focus of this paper. In particular, if outcomes x* and y* from experiments E-1 and E-2 (both with unknown parameter theta) have different probability models f(1) (center dot), f(2)(center dot), then even though f(1) (x*; theta) = cf(2)(y*; theta) for all theta, outcomes e and y* may have different implications for an inference about O. Although such violations stem from considering outcomes other than the one observed, we argue this does not require us to consider experiments other than the one performed to produce the data. David Cox [Ann. Math. Statist. 29 (1958) 357-372] proposes the Weak Conditionality Principle (WCP) to justify restricting the space of relevant repetitions. The WCP says that once it is known which E-i produced the measurement, the assessment should be in terms of the properties of E-i. The surprising upshot of Allan Birnbaum's [J. Amer Statist. Assoc. 57 (1962) 269-306] argument is that the SLP appears to follow from applying the WCP in the case of mixtures, and so uncontroversial a principle as sufficiency (SP). But this would preclude the use of sampling distributions. The goal of this article is to provide a new clarification and critique of Birnbaum's argument. Although his argument purports that [(WCP and SP) entails SLP], we show how data may violate the SLP while holding both the WCP and SP. Such cases also refute [WCP entails SLP].
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