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Material Type: Theses
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Language: English
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Program of Study: Statistics - Doctor of Philosophy
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Subject: Bayesian statistical decision theory
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Collection
Electronic Theses & Dissertations
8
Copyright Status
In Copyright
8
Subject
Alzheimer's disease
1
Artificial intelligence
1
Bioinformatics
1
Blood-vessels--Imaging
1
Brain--Imaging
1
Diagnostic imaging--Mathematical models
1
Dimensional analysis
1
Graph theory
1
Ising model
1
Marketing research--Statistical methods
1
Multivariate analysis
1
Neural networks (Computer science)
2
Statistics
2
Statistics--Methodology
1
Support vector machines
1
System analysis
1
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Variational bayes inference of Ising models and their applications
Kim, Minwoo
Text (2022)
Part of
Electronic Theses & Dissertations
Consistent Bayesian learning for neural network models : theory and computation
Jantre, Sanket Rajendra
Text (2022)
Part of
Electronic Theses & Dissertations
Variational bayes deep neural network : theory, methods and applications
Liu, Zihuan
Text (2021)
Part of
Electronic Theses & Dissertations
High dimensional computational models for biomedical imaging data analysis
Zhang, Liangliang
Text (2017)
Part of
Electronic Theses & Dissertations
Variable selection in high-dimensional setup : a detailed illustration through marketing and MRI data
Majumder, Atreyee
Text (2017)
Part of
Electronic Theses & Dissertations
Estimation of statistical network and region-wise variable selection
Chakraborty, Sayan
Text (2016)
Part of
Electronic Theses & Dissertations
Bayesian variable selection and functional data analysis : application to brain imaging
Banik, Asish Kumar
Text (2019)
Part of
Electronic Theses & Dissertations
Bayesian variable selection : extensions of nonlocal priors
Shi, Guiling
Text (2017)
Part of
Electronic Theses & Dissertations
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