Minimax Tests for Nonparametric Alternatives with Applications to High Frequency Data

We present a general methodology for developing an asymptotically distribution-free, asymptotic minimax tests. The tests are constructed via a nonparametric density-quantile function and the limiting distribution is derived by a martingale approach. The procedure can be viewed as a novel parametric...

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Other Authors: Yu, Han (authoraut)
Format: Others
Language:English
English
Published: Florida State University
Subjects:
Online Access:http://purl.flvc.org/fsu/fd/FSU_migr_etd-0796
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spelling ndltd-fsu.edu-oai-fsu.digital.flvc.org-fsu_1689632019-07-01T05:13:33Z Minimax Tests for Nonparametric Alternatives with Applications to High Frequency Data Yu, Han (authoraut) Song, Kai-Sheng (professor directing dissertation) Professor, Jack Quine (outside committee member) Professor, Fred Huffer (committee member) Professor, Dan McGee (committee member) Department of Statistics (degree granting department) Florida State University (degree granting institution) Text text Florida State University English eng 1 online resource computer application/pdf We present a general methodology for developing an asymptotically distribution-free, asymptotic minimax tests. The tests are constructed via a nonparametric density-quantile function and the limiting distribution is derived by a martingale approach. The procedure can be viewed as a novel parametric extension of the classical parametric likelihood ratio test. The proposed tests are shown to be omnibus within an extremely large class of nonparametric global alternatives characterized by simple conditions. Furthermore, we establish that the proposed tests provide better minimax distinguishability. The tests have much greater power for detecting high-frequency nonparametric alternatives than the existing classical tests such as Kolmogorov-Smirnov and Cramer-von Mises tests. The good performance of the proposed tests is demonstrated by Monte Carlo simulations and applications in High Energy Physics. A Dissertation submitted to the Department of Statistics in partial fulfillment of the requirements for the degree of Doctor of Philosophy. Degree Awarded: Summer Semester, 2006. Date of Defense: April 24, 2006. Nonparametric Alternatives, Nonparametric Likelihood Ratio, Minimaxity, Kullback-Leibler Includes bibliographical references. Kai-Sheng Song, Professor Directing Dissertation; Jack Quine Professor, Outside Committee Member; Fred Huffer Professor, Committee Member; Dan McGee Professor, Committee Member. Statistics FSU_migr_etd-0796 http://purl.flvc.org/fsu/fd/FSU_migr_etd-0796 http://diginole.lib.fsu.edu/islandora/object/fsu%3A168963/datastream/TN/view/Minimax%20Tests%20for%20Nonparametric%20Alternatives%20with%20Applications%20to%20High%20Frequency%20%20%20%20%20%20%20%20%20%20Data.jpg
collection NDLTD
language English
English
format Others
sources NDLTD
topic Statistics
spellingShingle Statistics
Minimax Tests for Nonparametric Alternatives with Applications to High Frequency Data
description We present a general methodology for developing an asymptotically distribution-free, asymptotic minimax tests. The tests are constructed via a nonparametric density-quantile function and the limiting distribution is derived by a martingale approach. The procedure can be viewed as a novel parametric extension of the classical parametric likelihood ratio test. The proposed tests are shown to be omnibus within an extremely large class of nonparametric global alternatives characterized by simple conditions. Furthermore, we establish that the proposed tests provide better minimax distinguishability. The tests have much greater power for detecting high-frequency nonparametric alternatives than the existing classical tests such as Kolmogorov-Smirnov and Cramer-von Mises tests. The good performance of the proposed tests is demonstrated by Monte Carlo simulations and applications in High Energy Physics. === A Dissertation submitted to the Department of Statistics in partial fulfillment of the requirements for the degree of Doctor of Philosophy. === Degree Awarded: Summer Semester, 2006. === Date of Defense: April 24, 2006. === Nonparametric Alternatives, Nonparametric Likelihood Ratio, Minimaxity, Kullback-Leibler === Includes bibliographical references. === Kai-Sheng Song, Professor Directing Dissertation; Jack Quine Professor, Outside Committee Member; Fred Huffer Professor, Committee Member; Dan McGee Professor, Committee Member.
author2 Yu, Han (authoraut)
author_facet Yu, Han (authoraut)
title Minimax Tests for Nonparametric Alternatives with Applications to High Frequency Data
title_short Minimax Tests for Nonparametric Alternatives with Applications to High Frequency Data
title_full Minimax Tests for Nonparametric Alternatives with Applications to High Frequency Data
title_fullStr Minimax Tests for Nonparametric Alternatives with Applications to High Frequency Data
title_full_unstemmed Minimax Tests for Nonparametric Alternatives with Applications to High Frequency Data
title_sort minimax tests for nonparametric alternatives with applications to high frequency data
publisher Florida State University
url http://purl.flvc.org/fsu/fd/FSU_migr_etd-0796
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