A Primer of Ecological Statistics

A Primer of Ecological Statistics
Title A Primer of Ecological Statistics PDF eBook
Author Nicholas J. Gotelli
Publisher Sinauer
Pages 0
Release 2013-03-14
Genre Science
ISBN 9781605350646

Download A Primer of Ecological Statistics Book in PDF, Epub and Kindle

A Primer of Ecological Statistics, Second Edition explains fundamental material in probability theory, experimental design, and parameter estimation for ecologists and environmental scientists. The book emphasizes a general introduction to probability theory and provides a detailed discussion of specific designs and analyses that are typically encountered in ecology and environmental science. Appropriate for use as either a stand-alone or supplementary text for upper-division undergraduate or graduate courses in ecological and environmental statistics, ecology, environmental science, environmental studies, or experimental design, the Primer also serves as a resource for environmental professionals who need to use and interpret statistics daily but have little or no formal training in the subject. The book is divided into four parts. Part I discusses the fundamentals of probability and statistical thinking. It introduces the logic and language of probability (Chapter 1), explains common statistical distributions used in ecology (Chapter 2) and important measures of central tendency and spread (Chapter 3), explains P-values, hypothesis testing, and statistical errors (Chapter 4), and introduces frequentist, Bayesian, and Monte Carlo methods of analysis (Chapter 5). Part II discusses how to successfully design and execute field experiments and sampling studies. Topics include design strategies (Chapter 6), a 'bestiary' of experimental designs (Chapter 7), and transformations and data management (Chapter 8). Part III discusses specific analyses, and covers the material that is the main core of most statistics texts. Topics include regression (Chapter 9), analysis of variance (Chapter 10), categorical data analysis (Chapter 11), and multivariate analysis (Chapter 12). Part IV—new to this edition—discusses two central topics in estimating important ecological metrics. Topics include quantification of biological diversity (Chapter 13) and estimating occupancy, detection probability, and population sizes from marked and unmarked populations (Chapter 14). The book includes a comprehensive glossary, a mathematical appendix on matrix algebra, and extensively annotated tables and figures. Footnotes introduce advanced and ancillary material: some are purely historical, others cover mathematical/statistical proofs or details, and still others address current topics in the ecological literature. Data files and code used for some of the examples, as well as errata, are available online.

A Primer of Ecology with R

A Primer of Ecology with R
Title A Primer of Ecology with R PDF eBook
Author M. Henry Stevens
Publisher Springer Science & Business Media
Pages 404
Release 2009-06-02
Genre Science
ISBN 0387898824

Download A Primer of Ecology with R Book in PDF, Epub and Kindle

Provides simple explanations of the important concepts in population and community ecology. Provides R code throughout, to illustrate model development and analysis, as well as appendix introducing the R language. Interweaves ecological content and code so that either stands alone. Supplemental web site for additional code.

Design and Analysis of Ecological Experiments

Design and Analysis of Ecological Experiments
Title Design and Analysis of Ecological Experiments PDF eBook
Author Samuel M. Scheiner
Publisher Oxford University Press
Pages 432
Release 2001-04-26
Genre Science
ISBN 0198030223

Download Design and Analysis of Ecological Experiments Book in PDF, Epub and Kindle

Ecological research and the way that ecologists use statistics continues to change rapidly. This second edition of the best-selling Design and Analysis of Ecological Experiments leads these trends with an update of this now-standard reference book, with a discussion of the latest developments in experimental ecology and statistical practice. The goal of this volume is to encourage the correct use of some of the more well known statistical techniques and to make some of the less well known but potentially very useful techniques available. Chapters from the first edition have been substantially revised and new chapters have been added. Readers are introduced to statistical techniques that may be unfamiliar to many ecologists, including power analysis, logistic regression, randomization tests and empirical Bayesian analysis. In addition, a strong foundation is laid in more established statistical techniques in ecology including exploratory data analysis, spatial statistics, path analysis and meta-analysis. Each technique is presented in the context of resolving an ecological issue. Anyone from graduate students to established research ecologists will find a great deal of new practical and useful information in this current edition.

Statistical Ecology

Statistical Ecology
Title Statistical Ecology PDF eBook
Author John A. Ludwig
Publisher John Wiley & Sons
Pages 362
Release 1988-05-18
Genre Mathematics
ISBN 9780471832355

Download Statistical Ecology Book in PDF, Epub and Kindle

Ecological community data. Spatial pattern analysis. Species-abundance relations. Species affinity. Community classification. Community ordination. Community interpretation.

A Primer of Ecological Genetics

A Primer of Ecological Genetics
Title A Primer of Ecological Genetics PDF eBook
Author Jeffrey K. Conner
Publisher Sinauer Associates Incorporated
Pages 304
Release 2004-01
Genre Science
ISBN 9780878932023

Download A Primer of Ecological Genetics Book in PDF, Epub and Kindle

This book covers basic concepts in population and quantitative genetics, including measuring selection on phenotypic traits. The emphasis is on material applicable to field studies of evolution focusing on ecologically important traits. Topics addressed are critical for training students in ecology, evolution, conservation biology, agriculture, forestry, and wildlife management. Many texts in this field are too complex and mathematical to allow the average beginning student to readily grasp the key concepts. A Primer of Ecological Genetics, in contrast, employs mathematics and statistics-fully explained, but at a less advanced level-as tools to improve understanding of biological principles. The main goal is to enable students to understand the concepts well enough that they can gain entry into the primary literature. Integration of the different chapters of the book shows students how diverse concepts relate to each other.

A Primer of Ecology

A Primer of Ecology
Title A Primer of Ecology PDF eBook
Author Nicholas J. Gotelli
Publisher
Pages 236
Release 1998
Genre Biologie des populations - Modèles mathématiques
ISBN 9780878932740

Download A Primer of Ecology Book in PDF, Epub and Kindle

A detailed exposition of the most common mathematical models in population and community ecology, covering exponential and logistic population growth, age-structured demography, metapopulation dynamics, competition, predation, and island biogeography. Intended to demystify ecological models and the math behind them by deriving the models from first principles. The primer may be used as a self-teaching tutorial, as a primary textbook, or as a supplemental text to a general ecology textbook. Annotation copyright by Book News, Inc., Portland, OR

Ecological Models and Data in R

Ecological Models and Data in R
Title Ecological Models and Data in R PDF eBook
Author Benjamin M. Bolker
Publisher Princeton University Press
Pages 408
Release 2008-07-21
Genre Computers
ISBN 0691125228

Download Ecological Models and Data in R Book in PDF, Epub and Kindle

Introduction and background; Exploratory data analysis and graphics; Deterministic functions for ecological modeling; Probability and stochastic distributions for ecological modeling; Stochatsic simulation and power analysis; Likelihood and all that; Optimization and all that; Likelihood examples; Standar statistics revisited; Modeling variance; Dynamic models.