Abstract
Simple conditions on the observed information ensure asymptotic normality of the conditional distributions of the randomly normed score statistic and maximum likelihood estimator given a suitable asymptotically ancillary statistic. In particular, asymptotic normality holds conditional on any asymptotically ancillary statistic asymptotically equivalent to observed information. The results apply to inference from a general stochastic process and are of particular relevance in the case of nonergodic models.
Citation
Trevor J. Sweeting. "Asymptotic Ancillarity and Conditional Inference for Stochastic Processes." Ann. Statist. 20 (1) 580 - 589, March, 1992. https://doi.org/10.1214/aos/1176348542
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