The determination of the number of mixture components (the order) of a finite mixture model has been an enduring problem in statistical inference. We prove that the closed testing principle leads to a sequential testing procedure (STP) that allows for confidence statements to be made regarding the order of a finite mixture model. We construct finite sample tests, via data splitting and data swapping, for use in the STP, and we prove that such tests are consistent against fixed alternatives. Simulation studies and real data examples are used to demonstrate the performance of the finite sample tests-based STP, yielding practical recommendations of their use as confidence estimators in combination with point estimates such as the Akaike information or Bayesian information criteria. In addition, we demonstrate that a modification of the STP yields a method that consistently selects the order of a finite mixture model, in the asymptotic sense. Our STP is not only applicable for order selection of finite mixture models, but is also useful for making confidence statements regarding any sequence of nested models.
翻译:确定一定混合物模型的混合物成分数量(顺序)一直是统计推论中的一个长期问题。我们证明,封闭测试原则导致一个连续测试程序(STTP),允许就一定混合物模型的顺序做出信任声明。我们通过数据分离和数据交换,为在STTP中使用,建立了有限的样本测试,并证明这种测试与固定替代品是一致的。模拟研究和真实数据实例被用来证明基于STTP的有限样本测试的性能,并结合Akaike信息或Bayesian信息标准等点估测,提出作为信任估测员的实用建议。此外,我们证明,对STTP的修改产生了一种方法,在无症状意义上始终选择一定混合物模型的顺序。我们的STP不仅适用于定点选择有限的混合物模型,而且可用于对任何嵌巢模型的序列做出信任声明。