Community Ecology

Analytical Methods Using R and Excel

By (author) Mark Gardener

Hardback - £59.99

Publication date:

01 February 2014

Length of book:

556 pages

Publisher

Pelagic Publishing

Dimensions:

244x170mm
7x10"

ISBN-13: 9781907807626

Interactions between species are of fundamental importance to all living systems and the framework we have for studying these interactions is community ecology. This is important to our understanding of the planets biological diversity and how species interactions relate to the functioning of ecosystems at all scales. Species do not live in isolation and the study of community ecology is of practical application in a wide range of conservation issues.

The study of ecological community data involves many methods of analysis. In this book you will learn many of the mainstays of community analysis including: diversity, similarity and cluster analysis, ordination and multivariate analyses. This book is for undergraduate and postgraduate students and researchers seeking a step-by-step methodology for analysing plant and animal communities using R and Excel.

Microsoft's Excel spreadsheet is virtually ubiquitous and familiar to most computer users. It is a robust program that makes an excellent storage and manipulation system for many kinds of data, including community data. The R program is a powerful and flexible analytical system able to conduct a huge variety of analytical methods, which means that the user only has to learn one program to address many research questions. Its other advantage is that it is open source and therefore completely free. Novel analytical methods are being added constantly to the already comprehensive suite of tools available in R.

Mark Gardener is both an ecologist and an analyst. He has worked in a range of ecosystems around the world and has been involved in research across a spectrum of community types. His knowledge of R is largely self-taught and this gives him insight into the needs of students learning to use R for complicated analyses.

Following an intuitive thread from data entry through to analysis and interpretation, this is intended as a comprehensive course in the main methods of community analysis, both traditional and current. The intimidating length can largely be attributed to the numerous worked examples with full output. Some techniques are demonstrated in both Excel and R, which seems superfluous, since the latter is almost invariably superior. I would have liked more on GREP, an invaluable tool for checking and formatting data, and a notable weakness of Excel. Overall this is a useful resource for postgraduate students, but it could have been more concise and selective.