
Statistical Modeling With R
a dual frequentist and Bayesian approach for life scientists
Pablo Inchausti(Author)
Oxford University Press
Published on 2. November 2022
Book
Hardback
480 pages
978-0-19-285901-3 (ISBN)
Description
To date, statistics has tended to be neatly divided into two theoretical approaches or frameworks: frequentist (or classical) and Bayesian. Scientists typically choose the statistical framework to analyse their data depending on the nature and complexity of the problem, and based on their personal views and prior training on probability and uncertainty. Although textbooks and courses should reflect and anticipate this dual reality, they rarely do so. This accessible textbook explains, discusses, and applies both the frequentist and Bayesian theoretical frameworks to fit the different types of statistical models that allow an analysis of the types of data most commonly gathered by life scientists. It presents the material in an informal, approachable, and progressive manner suitable for readers with only a basic knowledge of calculus and statistics.
Statistical Modeling with R is aimed at senior undergraduate and graduate students, professional researchers, and practitioners throughout the life sciences, seeking to strengthen their understanding of quantitative methods and to apply them successfully to real world scenarios, whether in the fields of ecology, evolution, environmental studies, or computational biology.
Statistical Modeling with R is aimed at senior undergraduate and graduate students, professional researchers, and practitioners throughout the life sciences, seeking to strengthen their understanding of quantitative methods and to apply them successfully to real world scenarios, whether in the fields of ecology, evolution, environmental studies, or computational biology.
Reviews / Votes
A book that should attract curious minds of various backgrounds, knowledge, and expertise in statistics, as well as work nicely to support an enthusiastic teacher of statistical modeling. I thus recommend this book most enthusiastically. * Christian P. Robert, Journal of the American Statistical Association * The book is a novel contribution to the literature on statistical modelling, it has my highest endorsement, and I look forward to using it in future graduate courses on applied statistics. * Lars Roennegard, Dalarna University *More details
Language
English
Place of publication
Oxford
United Kingdom
Target group
Professional and scholarly
Product notice
sewn/stitched
Cloth over boards
Dimensions
Height: 244 mm
Width: 203 mm
Thickness: 41 mm
Weight
1202 gr
ISBN-13
978-0-19-285901-3 (9780192859013)
Copyright in bibliographic data and cover images is held by Nielsen Book Services Limited or by the publishers or by their respective licensors: all rights reserved.
Schweitzer Classification
Other editions
Additional editions

Pablo Inchausti
Statistical Modeling With R
a dual frequentist and Bayesian approach for life scientists
E-Book
01/2023
1st Edition
OUP eBook
€43.49
Available for download

Pablo Inchausti
Statistical Modeling With R
a dual frequentist and Bayesian approach for life scientists
Book
11/2022
Oxford University Press
€58.79
Shipment within 15-20 days
Person
Pablo Inchausti is Professor of Ecology at the Universidad de la Republica, Centro Universitario Regional del Este, Uruguay. He is the co-editor of the influential and highly-cited book Biodiversity and Ecosystem Functioning: synthesis and perspectives (OUP, 2002) and has been successfully teaching statistics and mathematical modelling to students of the life and social sciences for over 15 years.
Author
Professor of EcologyProfessor of Ecology, Universidad de la Republica, Centro Universitario Regional del Este, Uruguay
Content
- Part 1: The Conceptual Basis For Fitting Statistical Models
- 1: General introduction
- 2: Statistical modeling: a short historical background
- 3: Estimating parameters: the main purpose of statistical inference
- Part II: Applying The Generalized Linear Model to Varied Data Types
- 4: The General Linear Model I: numerical explanatory variables
- 5: The General Linear Model II: categorical explanatory variables
- 6: The General Linear Model III: interactions between explanatory variables
- 7: Model selection: one, two, and more models fitted to the data
- 8: The Generalized Linear Model
- 9: When the response variable is binary
- 10: When the response variables are counts, often with many zeros
- 11: Further issues involved in the modeling of counts
- 12: Models for positive real-valued response variables: proportions and others
- Part III: Incorporating Experimental and Survey Design Using Mixed Models
- 13: Accounting for structure in mixed/hierachical structures
- 14: Experimental design in the life sciences - the basics
- 15: Mixed-hierachical models and experimental design data
- Afterword
- R packages used in the book
- Appendix 1: Using R and RStudio: the basics (only available online at www.oup.com/companion/InchaustiSMWR)
- Appendix 2: Exploring and describing the evidence in graphics (only available online at www.oup.com/companion/InchaustiSMWR)