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Activity Number: 535 - The American Statistician
Type: Invited
Date/Time: Thursday, August 6, 2020 : 1:00 PM to 2:50 PM
Sponsor: The American Statistician
Abstract #309175
Title: Invariance, Optimality, and a 1-Observation Confidence Interval for a Normal Mean
Author(s): Stephen Portnoy*
Companies: University of Illinois, Statistics Department
Keywords: Confidence Set; Randomized ; minimax
Abstract:

In a 1965 Decision Theory course at Stanford University, Charles Stein began a digression with “an amusing problem”: is there a proper confidence interval for the mean based on a single observation from a normal distribution with both mean and variance unknown? Stein introduced the interval with endpoints ±c|X| and showed indeed that for c large enough, the minimum coverage probability (over all values for the mean and variance) could be made arbitrarily near one. While the problem and coverage calculation were in the author’s hand-written notes from the course, there was no development of any optimality result for the interval. Here, the Hunt–Stein construction plus analysis based on special features of the problem provides a “minimax” rule in the sense that it minimizes the maximum expected length among all procedures with fixed coverage (or, equivalently, maximizes the minimal coverage among all procedures with a fixed expected length). The minimax rule is a mixture of two confidence procedures that are equivariant under scale and sign changes, and it is uniformly better than the classroom example or the natural interval X ± c|X| .


Authors who are presenting talks have a * after their name.

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