Christopher Hay-Jahans: An R Companion to Linear Statistical Models, Gebunden
An R Companion to Linear Statistical Models
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- Verlag:
- Taylor & Francis Ltd, 09/2026
- Einband:
- Gebunden
- Sprache:
- Englisch
- ISBN-13:
- 9781032936949
- Artikelnummer:
- 12825661
- Umfang:
- 440 Seiten
- Nummer der Auflage:
- 26002
- Ausgabe:
- 2. Auflage
- Erscheinungstermin:
- 28.9.2026
- Hinweis
-
Achtung: Artikel ist nicht in deutscher Sprache!
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Klappentext
Taking advantage of both user-developed code and specialized functions, this second edition of An R Companion to Linear Statistical Models again targets two primary audiences: Those who are familiar with the introductory theory and applications of linear statistical models and who wish to learn how to use R in this area, or explore further ideas that might appear in this Companion; and those who are enrolled in an intermediate to advanced level course on linear statistical models for which R is the computational platform.
This Companion includes accessible introductions to writing R code as well as making use of functions through relevant examples. These examples cover methods used for linear regression and designed experiments with up to two fixed-effects factors, including blocking variables and covariates. Also included in this edition is a new part containing chapters that revisit the one-factor fixed-effects model from alternative points of view, and provide introductions to applying R to nonstandard linear contrasts, one-factor random-effects and repeated-measures designs, weighted least squares, and modelling with binary response data.
Key Features
- Demonstrates how to create user-defined functions, and how to use pre-packaged functions from the Comprehensive R Archive Network (CRAN) as well as functions prepared specifically for this Companion.
- Has carefully documented accompanying R script files that follow along with the discussions in the book, and also contain additional exploratory code.
- Makes use of a relevant collection of examples to demonstrate both the statistical methods being discussed, as well as the R code used implement the methods.
- Provides detailed interpretations and explanations of graphical tools used, computed model parameter estimates, associated tests, and common "rules of thumb" used in interpreting graphs and computational output.
- Limits statistical and mathematical background theory to that which aids in following computational methods.