Artículo: AMZ-B0C6T9J6QX

Sparse Graphical Modeling for High Dimensional Data: A Paradigm of Conditional Independence Tests (Chapman & Hall/CRC Monographs on Statistics and Applied Probability)

Format:

Kindle

Hardcover

Kindle

Detalles del producto
Disponibilidad
En stock
Peso con empaque
0.20 kg
Devolución
No
Condición
Nuevo
Producto de
Amazon
Viaja desde
USA

Sobre este producto
  • 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 testsComplete treatments for different types of data, Gaussian, Poisson, multinomial, and mixed dataUnified treatments for data integration, network comparison, and covariate adjustmentUnified treatments for missing data and heterogeneous dataEfficient methods for joint estimation of multiple graphical modelsEffective methods of high-dimensional variable selectionEffective methods of high-dimensional inference

Producto prohibido

Este producto no está disponible

Este producto viaja de USA a tus manos en

Conoce más detalles

Highlight, take notes, and search in the book In this edition, page numbers are just like the physical edition