Statistics Seminar

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Date/Time:Thursday, 17 Nov 2011 from 12:00 pm to 1:00 pm
Location:1116 Sweeney
Cost:Free
URL:www.stat.iastate.edu
Contact:Jeanette La Grange
Phone:515-294-3440
Channel:College of Liberal Arts and Sciences
Categories:Lectures
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"Self-normalization for time series", Xiaofeng Shao, Department of Statistics, University of Illinois at Urbana-Champaign

In the inference of time series (e.g. hypothesis testing and confidence interval construction), one often needs to obtain a consistent estimate for the asymptotic covariance matrix of a statistic. Or the inference can be conducted by using resampling (e.g. moving block bootstrap) and subsampling techniques. What is common for almost all the existing methods is that they involve the selection of a smoothing parameter. Some rules have been proposed to choose the smoothing parameter, but they may involve another user-chosen number, or assume a parametric model.

In this talk, we introduce the so-called self-normalized (SN) approach in the context of confidence interval construction and change point detection. The self-normalized statistic does not involve any smoothing parameter and its limiting distribution is nuisance parameter free. The finite sample performance of the SN approach is evaluated in simulated and real data examples.