We study the statistical properties of an estimator derived by applying a gradient ascent method with multiple initializations to a multi-modal likelihood function. We derive the population quantity that is the target of this estimator and study the properties of confidence intervals (CIs) constructed from asymptotic normality and the bootstrap approach. In particular, we analyze the coverage deficiency due to finite number of random initializations. We also investigate the CIs by inverting the likelihood ratio test, the score test, and the Wald test, and we show that the resulting CIs may be very different. We propose a two-sample test procedure even when the MLE is intractable. In addition, we analyze the performance of the EM algorithm under random initializations and derive the coverage of a CI with a finite number of initializations.
翻译:我们通过对多模式概率函数应用具有多重初始化作用的梯度升度法来研究估计值的统计属性。我们得出这个估计值的目标人口数量,并研究根据无症状常态和靴套法构建的置信间隔(CIs)的特性。我们特别分析随机初始化数量有限导致的覆盖不足。我们还通过颠倒概率比率测试、分数测试和Wald测试来调查光标,并显示由此产生的光标可能非常不同。我们提议了一个双重样本测试程序,即使最低排放值难以解决。此外,我们还分析了随机初始化下的EM算法的性能,并用有限初始化数量得出CI的覆盖范围。