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Signal and variance component estimation in high dimensional linear models

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TitleInfo
Title
Signal and variance component estimation in high dimensional linear models
Name (type = personal)
NamePart (type = family)
Ma
NamePart (type = given)
Ruijun
NamePart (type = date)
1992-
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Ruijun Ma
Role
RoleTerm (authority = RULIB)
author
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Dicker
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Lee H.
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Lee H. Dicker
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Advisory Committee
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chair
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Buyske
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Steve
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Steve Buyske
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Advisory Committee
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internal member
Name (type = personal)
NamePart (type = family)
Zhang
NamePart (type = given)
Cun-Hui
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Cun-Hui Zhang
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Advisory Committee
Role
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internal member
Name (type = personal)
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Foster
NamePart (type = given)
Dean P.
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Dean P. Foster
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Advisory Committee
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outside member
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Rutgers University
Role
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degree grantor
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School of Graduate Studies
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school
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Text
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theses
OriginInfo
DateCreated (qualifier = exact)
2018
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2018-05
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2018
Place
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xx
Language
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eng
Abstract (type = abstract)
Over the past several decades, dimensionalities of many datasets have grown exponentially as technology advances. Many approaches have been proposed to tackle high-dimensional problems, where dimensionality is much larger than the sample size. This dissertation focuses on developing methodologies for signal and variance component estimations in three different areas, compressive sensing, genome-wide association studies and demand forecasting in the e-commerce industry. In literature, signal and variance component estimations are usually treated as independent tasks, and this work draws the connection between these estimation goals. For the first problem in compressive sensing, we propose an algorithm that incorporates nonparametric empirical Bayes method with generalized approximate message passing (AMP). Generalized AMP is an effective algorithm for recovering signals from noisy linear measurements, assuming known a priori signal distributions. However, in practice, both the signal distribution and noise level are often unknown. We propose nonparametric maximum likelihood-AMP (NPML-AMP) for estimating an arbitrary signal distribution in this setting. In addition, we propose a simple noise variance estimator for use in conjunction with NPML-AMP. For the second problem in genome-wide association studies, we focus on heritability estimation methods related to variance components estimation problems for linear mixed models (LMMs). Heritability is the proportion of phenotype variance explained by genetic variance, and standard approaches to LMM-based heritability estimation have some unresolved inconsistencies. We suggest that by adopting a slightly different statistical perspective, many of these inconsistencies can be seamlessly resolved. Moreover, with Mahalanobis kernel, we define a natural version of heritability, as a conditional variance under the fixed-effects model. The third problem is associated with predictions for online retailing demand forecasting and genetic risk prediction. In these big-data applications, regression-based linear dimension reduction technique performs well in minimizing out-of-sample error. We identify the asymptotic risk of such sharp estimate with a model known to be misspecified. More importantly, we propose to estimate its asymptotic risk by variance component estimation discussed in the second problem. The risk evaluation technique can also be extended to the model comparison between other methods with explicit asymptotic risk.
Subject (authority = RUETD)
Topic
Statistics and Biostatistics
RelatedItem (type = host)
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Title
Rutgers University Electronic Theses and Dissertations
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ETD
Identifier
ETD_8869
PhysicalDescription
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electronic resource
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application/pdf
InternetMediaType
text/xml
Extent
1 online resource (xiii, 91 p. : ill.)
Note (type = degree)
Ph.D.
Note (type = bibliography)
Includes bibliographical references
Subject (authority = ETD-LCSH)
Topic
Linear models (Statistics)
Note (type = statement of responsibility)
by Ruijun Ma
RelatedItem (type = host)
TitleInfo
Title
School of Graduate Studies Electronic Theses and Dissertations
Identifier (type = local)
rucore10001600001
Location
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NjNbRU
Identifier (type = doi)
doi:10.7282/T3TF01R9
Genre (authority = ExL-Esploro)
ETD doctoral
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Rights

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The author owns the copyright to this work.
RightsHolder (type = personal)
Name
FamilyName
Ma
GivenName
Ruijun
Role
Copyright Holder
RightsEvent
Type
Permission or license
DateTime (encoding = w3cdtf); (qualifier = exact); (point = start)
2018-04-12 14:30:24
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Name
Ruijun Ma
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Affiliation
Rutgers University. School of Graduate Studies
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Author Agreement License
Detail
I hereby grant to the Rutgers University Libraries and to my school the non-exclusive right to archive, reproduce and distribute my thesis or dissertation, in whole or in part, and/or my abstract, in whole or in part, in and from an electronic format, subject to the release date subsequently stipulated in this submittal form and approved by my school. I represent and stipulate that the thesis or dissertation and its abstract are my original work, that they do not infringe or violate any rights of others, and that I make these grants as the sole owner of the rights to my thesis or dissertation and its abstract. I represent that I have obtained written permissions, when necessary, from the owner(s) of each third party copyrighted matter to be included in my thesis or dissertation and will supply copies of such upon request by my school. I acknowledge that RU ETD and my school will not distribute my thesis or dissertation or its abstract if, in their reasonable judgment, they believe all such rights have not been secured. I acknowledge that I retain ownership rights to the copyright of my work. I also retain the right to use all or part of this thesis or dissertation in future works, such as articles or books.
RightsEvent
DateTime (encoding = w3cdtf); (qualifier = exact); (point = start)
2018-05-31
DateTime (encoding = w3cdtf); (qualifier = exact); (point = end)
2019-05-31
Type
Embargo
Detail
Access to this PDF has been restricted at the author's request. It will be publicly available after May 31st, 2019.
Copyright
Status
Copyright protected
Availability
Status
Open
Reason
Permission or license
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2018-04-12T12:20:13
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