Sparse Graphical Modeling for High Dimensional Data

Regular price €104.99
A01=Bochao Jia
A01=Faming Liang
Age Group_Uncategorized
Age Group_Uncategorized
Author_Bochao Jia
Author_Faming Liang
automatic-update
Bayesian Network
Bayesian networks
Category1=Non-Fiction
Category=PBT
Category=UFM
Conditional Independence Tests
COP=United Kingdom
data integration methods
Delivery_Pre-order
Empirical CDF
eq_bestseller
eq_computing
eq_isMigrated=2
eq_nobargain
eq_non-fiction
Gaussian
Gaussian Graphical Models
Gaussian Random Error
Graphical Lasso
graphical model
Group Lasso Penalty
heterogeneous datasets
High Dimensional Linear Regression
High Dimensional Regression
High Dimensional Regression Model
High Dimensional Scenario
high-dimensional graphical model inference
Independence Screening Procedure
Language_English
Markov Blankets
Missing Data
Mixture Gaussian Distribution
Moral Graph
Multiple Hypothesis Test
multivariate analysis
network comparison techniques
PA=Not yet available
parallel computing statistics
Precision Recall Curve
Price_€50 to €100
PS=Forthcoming
R
RNA Seq Data
Scad Penalty
Semiparametric Transformation
Sis Procedure
softlaunch
Standard Em Algorithm
statistical learning
Stochastic Em Algorithm
Variable Screening Procedure

Product details

  • ISBN 9780367183738
  • Weight: 780g
  • Dimensions: 156 x 234mm
  • Publication Date: 02 Aug 2023
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Hardback
  • Language: English
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This book provides a general framework for learning sparse graphical models with conditional independence tests. It includes complete treatments for Gaussian, Poisson, multinomial, and mixed data; unified treatments for covariate adjustments, data integration, and network comparison; unified treatments for missing data and heterogeneous data; efficient methods for joint estimation of multiple graphical models; effective methods of high-dimensional variable selection; and effective methods of high-dimensional inference. The methods possess an embarrassingly parallel structure in performing conditional independence tests, and the computation can be significantly accelerated by running in parallel on a multi-core computer or a parallel architecture. This book is intended to serve researchers and scientists interested in high-dimensional statistics, and graduate students in broad data science disciplines.

Key Features:

  • A general framework for learning sparse graphical models with conditional independence tests
  • Complete treatments for different types of data, Gaussian, Poisson, multinomial, and mixed data
  • Unified treatments for data integration, network comparison, and covariate adjustment
  • Unified treatments for missing data and heterogeneous data
  • Efficient methods for joint estimation of multiple graphical models
  • Effective methods of high-dimensional variable selection
  • Effective methods of high-dimensional inference

Dr. Faming Liang is Distinguished Professor of Statistics, Purdue University. Prior joining Purdue University in 2017, he held regular faculty positions in the Department of Biostatistics, University of Florida and Department of Statistics, Texas A&M University. Dr. Liang obtained his PhD degree from the Chinese University of Hong Kong in 1997. Dr. Liang is ASA fellow, IMS fellow, and elected member of International Statistical Association. Dr. Liang is also a winner of Youden Prize 2017. Dr. Liang has served as co-editor for Journal of Computational and Graphical Statistics, associate editor for multiple statistical journals, including Journal of the American Statistical Association, Journal of Computational and Graphical Statistics, Technometrics, Bayesian Analysis, and Biometrics, and editorial board member for Nature Scientific Report. Dr. Liang has published two books and over 130 journal/conference papers, which involve a variety of research fields such as Markov chain Monte Carlo, machine learning, bioinformatics, high-dimensional statistics, and big data computing.

Dr. Bochao Jia is research scientist at Eli Lilly and Company, Lilly Corporate Center, Indianapolis, Indiana, U.S.A. Dr. Jia obtained his PhD degree from University of Florida in 2018. Dr. Jia has published quite a few papers on sparse graphical modelling.