
The application and interpretation of statistics are central to ecological study and practice. Ecologists are now asking more sophisticated questions than in the past. These new questions, together with the continued growth of computing power and the availability of new software, have created a new generation of statistical techniques. These have resulted in major recent developments in both our understanding and practice of ecological statistics. This novel book synthesizes a number of these changes, addressing key approaches and issues that tend to be overlooked in other books such as missing/censored data, correlation structure of data, heterogeneous data, and complex causal relationships. These issues characterize a large proportion of ecological data, but most ecologists' training in traditional statistics simply does not provide them with adequate preparation to handle the associated challenges. Uniquely, Ecological Statistics highlights the underlying links among many statistical approaches that attempt to tackle these issues. In particular, it gives readers an introduction to approaches to inference, likelihoods, generalized linear (mixed) models, spatially or phylogenetically-structured data, and data synthesis, with a strong emphasis on conceptual understanding and subsequent application to data analysis. Written by a team of practicing ecologists, mathematical explanations have been kept to the minimum necessary. This user-friendly textbook will be suitable for graduate students, researchers, and practitioners in the fields of ecology, evolution, environmental studies, and computational biology who are interested in updating their statistical tool kits. A companion web site provides example data sets and commented code in the R language.
This book investigates the gap between traditional statistical training and the complex, heterogeneous data structures frequently encountered in modern ecological research. The authors, all practicing ecologists, provide a framework for navigating contemporary statistical challenges by emphasizing conceptual understanding over dense mathematical derivation. They argue that by mastering modern techniques like likelihood-based inference and generalized linear models, researchers can better address issues such as missing data and complex causal relationships in their field studies.
What You Will Find
Scope Limits
Experts and practitioners frequently cite this text as a bridge between theoretical statistics and the messy, real-world data common in ecological field studies. Readers often note that the focus on conceptual clarity makes it a highly accessible resource for graduate students and researchers looking to modernize their analytical toolkits.
Page Count:
407
Publication Date:
2015-01-01
Publisher:
OUP Oxford
ISBN-10:
0191652881
ISBN-13:
9780191652882
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