Skip to content

Read more about Statistics for Ecologists: A Frequentist and Bayesian Treatment of Modern Regression Models

Statistics for Ecologists: A Frequentist and Bayesian Treatment of Modern Regression Models

(0 reviews)

No ratings

John R. Fieberg, University of Minnesota

Copyright Year: 2024

ISBN 13: 9781959870029

Publisher: University of Minnesota Libraries Publishing

Language: English

Formats Available

Conditions of Use

Attribution Attribution
CC BY

Table of Contents

  • About the Author
  • Preface
  • Models for Normally Distributed Responses
  • What Variables to Include in a Model?
  • Frequentist and Bayesian Inferential Frameworks
  • Models for Non-Normal Data
  • Models for Correlated Data
  • Appendix
  • References

Ancillary Material

Submit ancillary resource

About the Book

Ecological data pose many challenges to statistical inference. Most data come from observational studies rather than designed experiments; observational units are frequently sampled repeatedly over time, resulting in multiple, non-independent measurements; response data are often binary (e.g., presence-absence data) or non-negative integers (e.g., counts), and therefore, the data do not fit the standard assumptions of linear regression (Normality, independence, and constant variance). This book will familiarize readers with modern statistical methods that address these complexities using both frequentist and Bayesian frameworks.

About the Contributors

Author

Dr. John R. Fieberg, University of Minnesota

Contribute to this Page

Suggest an edit to this book record