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OverviewWildlife researchers and ecologists make widespread use of multivariate statistics in their studies. With its focus on the practical application of the techniques of multivariate statistics, this book shapes the powerful tools of statistics for the specific needs of ecologists and makes statistics more applicable to their course of study. Multivariate Statistics for Wildlife and Ecology Research gives the reader a solid conceptual understanding of the role of multivariate statistics in ecological applications and the relationships among various techniques, while avoiding detailed mathematics and underlying theory. More important, the reader will gain insight into the type of research questions best handled by each technique and the important considerations in applying each one. Whether used as a textbook for specialized courses or as a supplement to general statistics texts, the book emphasizes those techniques that students of ecology and natural resources most need to understand and employ in their research. Detailed examples use real wildlife data sets analyzed using the SAS statistical software program. Full Product DetailsAuthor: Kevin McGarigal , Samuel A. Cushman , Susan Stafford , Samuel A. CushmanPublisher: Springer-Verlag New York Inc. Imprint: Springer-Verlag New York Inc. Edition: 1st ed. 2000. Corr. 2nd printing 2002 Dimensions: Width: 15.50cm , Height: 1.50cm , Length: 23.50cm Weight: 0.462kg ISBN: 9780387986425ISBN 10: 0387986421 Pages: 283 Publication Date: 20 June 2000 Audience: College/higher education , Professional and scholarly , Undergraduate , Postgraduate, Research & Scholarly Format: Paperback Publisher's Status: Active Availability: In Print This item will be ordered in for you from one of our suppliers. Upon receipt, we will promptly dispatch it out to you. For in store availability, please contact us. Table of Contents1 Introduction and Overview.- 1.1 Objectives.- 1.2 Multivariate Statistics: An Ecological Perspective.- 1.3 Multivariate Description and Inference.- 1.4 Multivariate Confusion!.- 1.5 Types of Multivariate Techniques.- 2 Ordination: Principal Components Analysis.- 2.1 Objectives.- 2.2 Conceptual Overview.- 2.3 Geometric Overview.- 2.4 The Data Set.- 2.5 Assumptions.- 2.6 Sample Size Requirements.- 2.7 Deriving the Principal Components.- 2.8 Assessing the Importance of the Principal Components.- 2.9 Interpreting the Principal Components.- 2.10 Rotating the Principal Components.- 2.11 Limitations of Principal Components Analysis.- 2.12 R-Factor Versus Q-Factor Ordination.- 2.13 Other Ordination Techniques.- Appendix 2.1.- 3 Cluster Analysis.- 3.1 Objectives.- 3.2 Conceptual Overview.- 3.3 The Definition of Cluster.- 3.4 The Data Set.- 3.5 Clustering Techniques.- 3.6 Nonhierarchical Clustering.- 3.7 Hierarchical Clustering.- 3.8 Evaluating the Stability of the Cluster Solution.- 3.9 Complementary Use of Ordination and Cluster Analysis.- 3.10 Limitations of Cluster Analysis.- Appendix 3.1.- 4 Discriminant Analysis.- 4.1 Objectives.- 4.2 Conceptual Overview.- 4.3 Geometric Overview.- 4.4 The Data Set.- 4.5 Assumptions.- 4.6 Sample Size Requirements.- 4.7 Deriving the Canonical Functions.- 4.8 Assessing the Importance of the Canonical Functions.- 4.9 Interpreting the Canonical Functions.- 4.10 Validating the Canonical Functions.- 4.11 Limitations of Discriminant Analysis.- Appendix 4.1.- 5 Canonical Correlation Analysis.- 5.1 Objectives.- 5.2 Conceptual Overview.- 5.3 Geometric Overview.- 5.4 The Data Set.- 5.5 Assumptions.- 5.6 Sample Size Requirements.- 5.7 Deriving the Canonical Variates.- 5.8 Assessing the Importance of the Canonical Variates.- 5.9 Interpreting the Canonical Variates.- 5.10 Validating the Canonical Variates.- 5.11 Limitations of Canonical Correlation Analysis.- Appendix 5.1.- 6 Summary and Comparison.- 6.1 Objectives.- 6.2 Relationship Among Techniques.- 6.3 Complementary Use of Techniques.- Appendix: Acronyms Used in This Book.Reviews
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