Advanced Linear Models for Data Science
Lun Jun 26, 2023 11:43 pm
[/center]
pdf | 432.72 KB | English | Isbn: 978-0761919049 | Author: Stephen W. Raudenbush | Year: 2001
[/center]
Description:
Popular in the First Edition for its rich, illustrative examples and lucid explanations of the theory and use of hierarchical linear models (HLM), the book has been reorganized into four parts with four completely new chapters. The first two parts, Part I on "The Logic of Hierarchical Linear Modeling" and Part II on "Basic Applications" closely parallel the first nine chapters of the previous edition with significant expansions and technical clarifications, such as:
* An intuitive introductory summary of the basic procedures for estimation and inference used with HLM models that only requires a minimal level of mathematical sophistication in Chapter 3
* New section on multivariate growth models in Chapter 6
* A discussion of research synthesis or meta-analysis applications in Chapter 7
* Data analytic advice on centering of level-1 predictors and new material on plausible value intervals and robust standard estimators
Category:Research Reference Books, Social Sciences Research, Probability & Statistics
lm.pdf
[/center]
lm.pdf
- The Catalogue of Computational Material Models - Basic Geometrically Linear Models...
- Linear Regression Models - Applications in R
- Data Engineering with Python Work with massive datasets to design data models and ...
- Expert Data Modeling with Power BI: Enrich and optimize Your data models to get th...
- Expert Data Modeling with Power BI: Enrich and optimize Your data models to get th...
Permisos de este foro:
No puedes responder a temas en este foro.