General

Authors

Search


Committee login



 
 

 


 

 

Forthcoming

Small thumbnail

Baidu SEO

Challenges and Intricacies of Marketing in China

Small thumbnail

Asymmetric Alliances and Information Systems

Issues and Prospects

Small thumbnail

Technicity vs Scientificity

Complementarities and Rivalries

Small thumbnail

Freshwater Fishes

250 Million Years of Evolutionary History

Small thumbnail

Biostatistics and Computer-based Analysis of Health Data using SAS

Biostatistics and Health Science Set

Small thumbnail

Predictive Control

Small thumbnail

Fundamentals of Advanced Mathematics 1

Categories, Algebraic Structures, Linear and Homological Algebra

Small thumbnail

Swelling Concrete in Dams and Hydraulic Structures

DSC 2017

Small thumbnail

The Chemostat

Mathematical Theory of Microorganims Cultures

Small thumbnail

Earthquake Occurrence

Short- and Long-term Models and their Validation

Small thumbnail

Data Treatment in Environmental Sciences

Multivaried Approach

Valérie David, University of Bordeaux, France

ISBN: 9781785482397

Publication Date: May 2017   Hardback   194 pp.

100.00 USD


Add to cart

eBooks


Ebook

Description

Data Treatment in Environmental Sciences presents the various methods used in the analysis of databases, obtained in the field or in a laboratory, by focusing on the most commonly used multivariate analyses in different disciplines of environmental sciences from geochemistry to ecology. The book examines the principles, application conditions and implementation (in R software) of various analyses before interpreting them. The wide variety of analyses presented allows us to treat datasets, both large and small, which are often limited in terms of available processing techniques.
The approach taken by the author details (i) the preparation of a dataset prior to analysis, in relation to the scientific strategy and objectives of the study, (ii) the preliminary treatment of datasets, (iii) the establishment of a structure of objects (stations/dates) or relevant variables (e.g. physicochemical, biological), and (iv) how to highlight the explanatory parameters of these structures (e.g. how the physico-chemistry influences the biological structure obtained).

Contents

1. Observing and Preparing a Data Set.
2. Preliminary Treatment of the Data Set.
3. Structure as Groups of Objects/Variables.
4. Structure as Gradients of Objects/Variables.
5. Understanding a Structure.

About the Authors

Valérie David is a lecturer and researcher at the University of Bordeaux in France.

Downloads

DownloadTable of Contents - PDF File - 300 Kb

































0.01752 s.