Statistical methods are a key tool for all scientists working with data, but learning the basic mathematical skills can be one of the most challenging components of a biologist's training. This accessible book provides a contemporary introduction to the classical techniques and modern extensions of linear model analysis: one of the most useful approaches in the analysis of scientific data in the life and environmental sciences. It emphasizes an estimation-based approach that accounts for recent criticisms of the over-use of probability values, and introduces alternative approaches using information criteria. Statistics are introduced through worked analyses performed in R, the free open source programming language for statistics and graphics, which is rapidly becoming the standard software in many areas of science and technology. These analyses use real data sets from ecology, evolutionary biology and environmental science, and the data sets and R scripts are available as support material. The book's structure and user friendly style stem from the author's 20 years of experience teaching statistics to life and environmental scientists at both the undergraduate and graduate levels. The New Statistics with R is suitable for senior undergraduate and graduate students, professional researchers, and practitioners in the fields of ecology, evolution, environmental studies, and computational biology. Supporting material for the book is available at the author's website: www.plantecol.org/contemporary-analysis-for-ecology/
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An introductory level text covering linear, generalized linear, linear mixed-effects, and generalized mixed models implemented in R and set within a contemporary framework.
1. Introduction ; 2. Comparing Groups: Analysis of Variance ; 3. Comparing Groups: Student's t test ; 4. Linear Regression ; 5. Comparisons using Estimates and Intervals ; 6. Interactions ; 7. Analysis of Covariance: ANCOVA ; 8. Maximum Likelihood and Generalized Linear Models ; 9. Generalized Linear Models for Data with Non-Normal Distributions ; 10. Mixed Effects Models ; 11. Generalized Linear Mixed-effects Models ; 12. Final Thoughts ; Appendix 1: A very short introduction to the R programming language for statistics and graphics
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The book is suitable for undergraduate and graduate students, researchers and practitioners in biological sciences. I found it refreshing and worthy of wide use. * Basil Jarvis, The Biologist *[T]his book is of great interest ... it is important to evaluate its value as a teaching tool for R for biologists. ... [T]he book's strength is that it takes an applied scientist through the necessary basic statistics, and shows step by step how to work with real data. The New Statistics with R is, furthermore, a great textbook for computer exercise sessions in any introductory statistical class (especially for the life sciences). With its help, one should be able to design a very attractive course for both applied and more theoretical students. * Krzysztof Bartoszek, Systematic Biology *... overall the book gives useful, ecumenical, and reliable statistical advice. I would recommend it for courses that are trying to equip students who already know elementary statistics with the basic tools they need to understand and perform analyses of real, messy data. * Ben Bolker, Quarterly Review of Biology *
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Produktdetaljer

ISBN
9780198729068
Publisert
2015
Utgiver
Vendor
Oxford University Press
Vekt
426 gr
Høyde
241 mm
Bredde
168 mm
Dybde
10 mm
Aldersnivå
05, UU
Språk
Product language
Engelsk
Format
Product format
Heftet
Antall sider
224

Forfatter

Biographical note

Andy Hector is Professor of Ecology in the University of Oxford's Department of Plant Sciences. He currently convenes and teaches statistics on the Quantitative Methods for Biologists course for undergraduates. He is a community ecologist interested in biodiversity loss and its consequences for ecosystem functioning, stability and services and scientific PI of the Sabah Biodiversity Experiment. He has contributed to several publications on ecological analysis.