A study of the calibration-inverse prediction problem in a mixed model setting

Master of Science === Department of Statistics === Paul I. Nelson === The Calibration-Inverse Prediction Problem was investigated in a mixed model setting. Two methods were used to construct inverse prediction intervals. Method 1 ignores the random block effect in the mixed model and constructs th...

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Main Author: Yang, Celeste
Language:en_US
Published: Kansas State University 2008
Subjects:
Online Access:http://hdl.handle.net/2097/1079
id ndltd-KSU-oai-krex.k-state.edu-2097-1079
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spelling ndltd-KSU-oai-krex.k-state.edu-2097-10792016-03-01T03:50:00Z A study of the calibration-inverse prediction problem in a mixed model setting Yang, Celeste Calibration Inverse Prediction Mixed Model RTLA Statistics (0463) Master of Science Department of Statistics Paul I. Nelson The Calibration-Inverse Prediction Problem was investigated in a mixed model setting. Two methods were used to construct inverse prediction intervals. Method 1 ignores the random block effect in the mixed model and constructs the inverse prediction interval in the standard manner using quantiles from an F distribution. Method 2 uses a bootstrap to estimate quantiles of an approximate pivotal and then follows essentially the same procedure as in method 1. A simulation study was carried out to compare how the intervals created by the two methods performed in terms of coverage rate and mean interval length. Results from our simulation study suggest that when the variance component of the block is large relative to the location variance component, the coverage rate of the intervals produced by the two methods differ significantly. Method 2 appears to yield intervals which have a slightly higher coverage rate and wider interval length then did method 1. Both methods yielded intervals with coverage rates below nominal for approximately 1/3 of the simulation settings. 2008-12-18T15:37:37Z 2008-12-18T15:37:37Z 2008-12-18T15:37:37Z 2008 December Report http://hdl.handle.net/2097/1079 en_US Kansas State University
collection NDLTD
language en_US
sources NDLTD
topic Calibration
Inverse Prediction
Mixed Model
RTLA
Statistics (0463)
spellingShingle Calibration
Inverse Prediction
Mixed Model
RTLA
Statistics (0463)
Yang, Celeste
A study of the calibration-inverse prediction problem in a mixed model setting
description Master of Science === Department of Statistics === Paul I. Nelson === The Calibration-Inverse Prediction Problem was investigated in a mixed model setting. Two methods were used to construct inverse prediction intervals. Method 1 ignores the random block effect in the mixed model and constructs the inverse prediction interval in the standard manner using quantiles from an F distribution. Method 2 uses a bootstrap to estimate quantiles of an approximate pivotal and then follows essentially the same procedure as in method 1. A simulation study was carried out to compare how the intervals created by the two methods performed in terms of coverage rate and mean interval length. Results from our simulation study suggest that when the variance component of the block is large relative to the location variance component, the coverage rate of the intervals produced by the two methods differ significantly. Method 2 appears to yield intervals which have a slightly higher coverage rate and wider interval length then did method 1. Both methods yielded intervals with coverage rates below nominal for approximately 1/3 of the simulation settings.
author Yang, Celeste
author_facet Yang, Celeste
author_sort Yang, Celeste
title A study of the calibration-inverse prediction problem in a mixed model setting
title_short A study of the calibration-inverse prediction problem in a mixed model setting
title_full A study of the calibration-inverse prediction problem in a mixed model setting
title_fullStr A study of the calibration-inverse prediction problem in a mixed model setting
title_full_unstemmed A study of the calibration-inverse prediction problem in a mixed model setting
title_sort study of the calibration-inverse prediction problem in a mixed model setting
publisher Kansas State University
publishDate 2008
url http://hdl.handle.net/2097/1079
work_keys_str_mv AT yangceleste astudyofthecalibrationinversepredictionprobleminamixedmodelsetting
AT yangceleste studyofthecalibrationinversepredictionprobleminamixedmodelsetting
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