Statistical Methods for Mediation, Confounding and Moderation Analysis Using R and SAS

Regular price €61.50
Quantity:
Ships in 10-20 days
Delivery/Collection within 10-20 working days
Shipping & Delivery
A01=Bin Li
A01=Qingzhao Yu
advanced third-variable effect analysis
Author_Bin Li
Author_Qingzhao Yu
Average Direct Effect
Average Indirect Effect
Bayesian statistics
Bootstrap Samples
Category=PBT
causal inference
Chemotherapy Benefit
Conditional Expectations
confounding effects
CP Method
Data Sets
Elastic Net
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
Exposure Outcome Relationship
Exposure Variable
Generalized Linear Models
health disparities
Hierarchical Data Structure
high-dimensional analysis
Indirect Effect
Indirect Effect Estimates
interaction effect
interaction effects
intervention effect
Invasive Breast Cancer
moderation
moderation/interaction effect
moderationinteraction effect
multilevel modeling
Multiple multivariate mediation analysis
Natural Indirect Effect
Negative Lymph Node Breast Cancer
nonparametric models
Partial Dependence Plots
Racial Disparity
Recurrence Score
SAS Environment
SAS Macro
statistical mediation
True Indirect Effect
Variable Outcome Relationship
WinBUGS Models

Product details

  • ISBN 9781032220086
  • Weight: 540g
  • Dimensions: 156 x 234mm
  • Publication Date: 27 May 2024
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Paperback
Secure checkout Fast Shipping Easy returns

Third-variable effect refers to the effect transmitted by third-variables that intervene in the relationship between an exposure and a response variable. Differentiating between the indirect effect of individual factors from multiple third-variables is a constant problem for modern researchers.

Statistical Methods for Mediation, Confounding and Moderation Analysis Using R and SAS introduces general definitions of third-variable effects that are adaptable to all different types of response (categorical or continuous), exposure, or third-variables. Using this method, multiple third- variables of different types can be considered simultaneously, and the indirect effect carried by individual third-variables can be separated from the total effect. Readers of all disciplines familiar with introductory statistics will find this a valuable resource for analysis.

Key Features:

  • Parametric and nonparametric method in third variable analysis
  • Multivariate and Multiple third-variable effect analysis
  • Multilevel mediation/confounding analysis
  • Third-variable effect analysis with high-dimensional data Moderation/Interaction effect analysis within the third-variable analysis
  • R packages and SAS macros to implement methods proposed in the book

Qingzhao Yu is Professor in Biostatistics, Louisiana State University Health Sciences Center.

Bin Li is Associate Professor in Statistics, Louisiana State University.

More from this author