The first all-inclusive introduction to modern statistical research methods in the natural resource sciences
The use of Bayesian statistical analysis has become increasingly important to natural resource scientists as a practical tool for solving various research problems. However, many important contemporary methods of applied statistics, such as generalized linear modeling, mixed-effects modeling, and Bayesian statistical analysis and inference, remain relatively unknown among researchers and practitioners in this field. Through its inclusive, hands-on treatment of real-world examples, Contemporary Bayesian and Frequentist Statistical Research Methods for Natural Resource Scientists successfully introduces the key concepts of statistical analysis and inference with an accessible, easy-to-follow approach.
The book provides case studies illustrating common problems that exist in the natural resource sciences and presents the statistical knowledge and tools needed for a modern treatment of these issues. Subsequent chapter coverage features:
An introduction to the fundamental concepts of Bayesian statistical analysis, including its historical background, conjugate solutions, Bayesian hypothesis testing and decision-making, and Markov Chain Monte Carlo solutions
The relevant advantages of using Bayesian statistical analysis, rather than the traditional frequentist approach, to address research problems
Two alternative strategies—the a posteriori model selection strategy and the a priori parsimonious model selection strategy using AIC and DIC—to model selection and inference
The ideas of generalized linear modeling (GLM), focusing on the most popular GLM of logistic regression
An introduction to mixed-effects modeling in S-Plus® and R for analyzing natural resource data sets with varying error structures and dependencies
Each statistical concept is accompanied by an illustration of its frequentist application in S-Plus® or R as well as its Bayesian application in WinBUGS. Brief introductions to these software packages are also provided to help the reader fully understand the concepts of the statistical methods that are presented throughout the book. Assuming only a minimal background in introductory statistics, Contemporary Bayesian and Frequentist Statistical Research Methods for Natural Resource Scientists is an ideal text for natural resource students studying statistical research methods at the upper-undergraduate or graduate level and also serves as a valuable problem-solving guide for natural resource scientists across a broad range of disciplines, including biology, wildlife management, forestry management, fisheries management, and the environmental sciences.
Die Inhaltsangabe kann sich auf eine andere Ausgabe dieses Titels beziehen.
Howard B. Stauffer, PhD, is Professor of Applied Statistics and former chairperson of the Mathematics Department at Humboldt State University. Dr. Stauffer has over thirty-five years of experience in academia, government, and industry specializing in sampling and experimental design and analysis, in addition to the current methodologies in statistical analysis, such as generalized linear modeling, mixed-effects modeling, Bayesian statistical analysis, and capture-recapture analysis.
The first all-inclusive introduction to modern statistical research methods in the natural resource sciences
The use of Bayesian statistical analysis has become increasingly important to natural resource scientists as a practical tool for solving various research problems. However, many important contemporary methods of applied statistics, such as generalized linear modeling, mixed-effects modeling, and Bayesian statistical analysis and inference, remain relatively unknown among researchers and practitioners in this field. Through its inclusive, hands-on treatment of real-world examples, Contemporary Bayesian and Frequentist Statistical Research Methods for Natural Resource Scientists successfully introduces the key concepts of statistical analysis and inference with an accessible, easy-to-follow approach.
The book provides case studies illustrating common problems that exist in the natural resource sciences and presents the statistical knowledge and tools needed for a modern treatment of these issues. Subsequent chapter coverage features:
An introduction to the fundamental concepts of Bayesian statistical analysis, including its historical background, conjugate solutions, Bayesian hypothesis testing and decision-making, and Markov Chain Monte Carlo solutions
The relevant advantages of using Bayesian statistical analysis, rather than the traditional frequentist approach, to address research problems
Two alternative strategiesâ??the a posteriori model selection strategy and the a priori parsimonious model selection strategy using AIC and DICâ??to model selection and inference
The ideas of generalized linear modeling (GLM), focusing on the most popular GLM of logistic regression
An introduction to mixed-effects modeling in S-Plus® and R for analyzing natural resource data sets with varying error structures and dependencies
Each statistical concept is accompanied by an illustration of its frequentist application in S-Plus® or R as well as its Bayesian application in WinBUGS. Brief introductions to these software packages are also provided to help the reader fully understand the concepts of the statistical methods that are presented throughout the book. Assuming only a minimal background in introductory statistics, Contemporary Bayesian and Frequentist Statistical Research Methods for Natural Resource Scientists is an ideal text for natural resource students studying statistical research methods at the upper-undergraduate or graduate level and also serves as a valuable problem-solving guide for natural resource scientists across a broad range of disciplines, including biology, wildlife management, forestry management, fisheries management, and the environmental sciences.
The first all-inclusive introduction to modern statistical research methods in the natural resource sciences
The use of Bayesian statistical analysis has become increasingly important to natural resource scientists as a practical tool for solving various research problems. However, many important contemporary methods of applied statistics, such as generalized linear modeling, mixed-effects modeling, and Bayesian statistical analysis and inference, remain relatively unknown among researchers and practitioners in this field. Through its inclusive, hands-on treatment of real-world examples, Contemporary Bayesian and Frequentist Statistical Research Methods for Natural Resource Scientists successfully introduces the key concepts of statistical analysis and inference with an accessible, easy-to-follow approach.
The book provides case studies illustrating common problems that exist in the natural resource sciences and presents the statistical knowledge and tools needed for a modern treatment of these issues. Subsequent chapter coverage features:
An introduction to the fundamental concepts of Bayesian statistical analysis, including its historical background, conjugate solutions, Bayesian hypothesis testing and decision-making, and Markov Chain Monte Carlo solutions
The relevant advantages of using Bayesian statistical analysis, rather than the traditional frequentist approach, to address research problems
Two alternative strategiesâ??the a posteriori model selection strategy and the a priori parsimonious model selection strategy using AIC and DICâ??to model selection and inference
The ideas of generalized linear modeling (GLM), focusing on the most popular GLM of logistic regression
An introduction to mixed-effects modeling in S-Plus® and R for analyzing natural resource data sets with varying error structures and dependencies
Each statistical concept is accompanied by an illustration of its frequentist application in S-Plus® or R as well as its Bayesian application in WinBUGS. Brief introductions to these software packages are also provided to help the reader fully understand the concepts of the statistical methods that are presented throughout the book. Assuming only a minimal background in introductory statistics, Contemporary Bayesian and Frequentist Statistical Research Methods for Natural Resource Scientists is an ideal text for natural resource students studying statistical research methods at the upper-undergraduate or graduate level and also serves as a valuable problem-solving guide for natural resource scientists across a broad range of disciplines, including biology, wildlife management, forestry management, fisheries management, and the environmental sciences.
We will begin this initial chapter by introducing three case studies that illustrate some of the fundamental general statistical problems challenging the contemporary natural resource scientist. We will then present a review and preview of some solution strategies to these general problems. The first solution strategies that we will review are traditional frequentist approaches: parameter estimation from sample surveys, hypothesis testing from experiments, and linear regression modeling. Each of these methods is summarized using a frequentist approach to statistical analysis. We will then preview some more contemporary solution strategies: an alternative Bayesian approach to statistical analysis and other more advanced solutions to the case studies, generalized linear modeling, and mixed-effects modeling using both frequentist and Bayesian approaches to statistical analysis. We will also preview a more contemporary approach to model selection and inference using information-theoretic criteria such as Akaike's information criterion for frequentist statistical analysis and the deviance information criterion for Bayesian statistical analysis. All of these contemporary methods will be discussed in greater detail throughout the remainder of this book and illustrated with examples.
In this initial chapter we include a reminder of the importance of project management in natural resource studies with statistical components. Project management consists of organizing projects into three phases: a planning phase, a data collection phase, and a concluding phase. The planning phase includes an identification of the problem and the objectives of the project, along with a statistical design for the collection of the dataset. The concluding phase includes a statistical analysis of the dataset, along with interpretation and conclusions drawn from the analysis. All of these statistical components-the statistical design, the collection of the dataset, and the statistical analysis-provide essential tools for the solutions to the objectives of the project.
We conclude this initial chapter with an introduction to the frequentist statistical analysis software used throughout the book: the proprietary software S-Plus and its freeware "equivalent" R. The Bayesian statistical analysis software WinBUGS will be introduced in Chapters 2-4 when Bayesian ideas are discussed.
1.1 INTRODUCTION
In recent years there have been major advances in the methods of statistics used for research in the natural resource sciences. Yet, little of this is known outside selected research circles. Students and scientists in the natural resource sciences have continued to use traditional frequentist methods, such as the estimation of parameters from sample surveys, t tests and ANOVA hypothesis testing from experiments, and linear regression modeling. However, extraordinary newer methods are now available that enhance, complement, and extend these basic techniques, methods such as Bayesian statistical inference, information-theoretic approaches to model selection, generalized linear modeling, and mixed-effects modeling. It is the primary objective of this book to introduce these newer contemporary methods to natural resource students and scientists.
This book must begin by emphasizing critical statistical issues that have too often been neglected in natural resource studies in the past. We stress the importance of the planning and concluding phases in a data collection project. We particularly highlight the essential role of statistical design and analysis that help ensure the efficient, powerful, and effective use of data. Our approach throughout the book will be "hands-on," illustrating concepts with examples using the software languages of S-Plus or R for frequentist statistical analysis and WinBUGS for Bayesian statistical analysis.
Let's begin with a description of several case studies that illustrate problems of fundamental interest to contemporary natural resource scientists.
1.2 THREE CASE STUDIES
1.2.1 Case Study 1: Maintenance of a Population Parameter Above a Critical Threshold Level
A fundamental problem of interest to contemporary natural resource scientists is to assess whether a critical population parameter, such as a proportion parameter p, has been maintained above (or below) a specified critical threshold level: p [greater than or equal to] [p.sub.c] (or p [less than or equal to] [p.sub.c])?
Many examples in natural resource science illustrate this problem:
1. A timber company is required to maintain the proportion p of its timberlands occupied by nesting Northern Spotted Owl pairs above a specified threshold level [p.sub.c]. The threshold [p.sub.c] is a level determined by biologists to ensure the viability of the local population of owls.
2. Federal managers of a national forest are interested in maintaining the proportion p of forest covered by dense undergrowth below a specified threshold level [p.sub.c], to limit the risk of fire.
3. The managers of a national park are interested in maintaining the proportion p of a disease or insect infestation below a specified threshold level [p.sub.c] to control its spread.
4. Fishery biologists managing a watershed are interested in maintaining the proportional abundance p of a fishery above a specified threshold level [p.sub.c] of its carrying capacity to ensure its long-term sustainability.
5. A government agency implementing a natural resource conservation policy is interested in ensuring that the proportion p of the public in favor of one of its controversial policies is maintained above a certain threshold level [p.sub.c].
Besides the proportion parameter p in the examples presented above, there are many other biological parameters of interest to natural resource managers with similar threshold issues, such as the mean abundance [mu], survival rate [phi] from year i to year i + 1, fitness [[lambda].sub.i] = [N.sub.i+1]/[N.sub.i] (where [N.sub.i] and [N.sub.i+1] are the population abundances in years i and i + 1), ecological diversity index such as the Shannon-Wiener diversity index H, and population total [tau].
The failure to maintain the population parameter p above (or below) the threshold level [p.sub.c] might suggest the need for a "corrective action" decision in the examples listed above, such as
1. Reducing the timber harvesting
2. Applying fire suppression treatment
3. Applying disease or insect treatment
4. Increasing the watershed river flow by releasing more water from a dam
5. Altering the natural resource conservation policy
Alternatively, success at maintaining the population parameter p above (or below) the threshold [p.sub.c] might suggest a decision of "no action."
In such circumstances, a common approach employed by natural resource scientists is to begin monitoring the population and collecting sample data, say, on an annual basis, in order to assess the status of the population parameter. The intent is to conduct...
„Über diesen Titel“ kann sich auf eine andere Ausgabe dieses Titels beziehen.
Anbieter: Ammareal, Morangis, Frankreich
Hardcover. Zustand: Très bon. Ancien livre de bibliothèque. Salissures sur la tranche. Edition 2008. Ammareal reverse jusqu'à 15% du prix net de cet article à des organisations caritatives. ENGLISH DESCRIPTION Book Condition: Used, Very good. Former library book. Stains on the edge. Edition 2008. Ammareal gives back up to 15% of this item's net price to charity organizations. Bestandsnummer des Verkäufers E-812-915
Anzahl: 1 verfügbar
Anbieter: Brook Bookstore On Demand, Napoli, NA, Italien
Zustand: new. Bestandsnummer des Verkäufers d872c010597535ccdb587d0e7c9ee40f
Anzahl: Mehr als 20 verfügbar
Anbieter: GreatBookPrices, Columbia, MD, USA
Zustand: New. Bestandsnummer des Verkäufers 5055080-n
Anzahl: Mehr als 20 verfügbar
Anbieter: PBShop.store UK, Fairford, GLOS, Vereinigtes Königreich
HRD. Zustand: New. New Book. Shipped from UK. Established seller since 2000. Bestandsnummer des Verkäufers FW-9780470165041
Anzahl: 15 verfügbar
Anbieter: Ria Christie Collections, Uxbridge, Vereinigtes Königreich
Zustand: New. In. Bestandsnummer des Verkäufers ria9780470165041_new
Anzahl: Mehr als 20 verfügbar
Anbieter: GreatBookPricesUK, Woodford Green, Vereinigtes Königreich
Zustand: New. Bestandsnummer des Verkäufers 5055080-n
Anzahl: Mehr als 20 verfügbar
Anbieter: Rarewaves.com USA, London, LONDO, Vereinigtes Königreich
Hardback. Zustand: New. The first all-inclusive introduction to modern statistical research methods in the natural resource sciences The use of Bayesian statistical analysis has become increasingly important to natural resource scientists as a practical tool for solving various research problems. However, many important contemporary methods of applied statistics, such as generalized linear modeling, mixed-effects modeling, and Bayesian statistical analysis and inference, remain relatively unknown among researchers and practitioners in this field. Through its inclusive, hands-on treatment of real-world examples, Contemporary Bayesian and Frequentist Statistical Research Methods for Natural Resource Scientists successfully introduces the key concepts of statistical analysis and inference with an accessible, easy-to-follow approach. The book provides case studies illustrating common problems that exist in the natural resource sciences and presents the statistical knowledge and tools needed for a modern treatment of these issues. Subsequent chapter coverage features: An introduction to the fundamental concepts of Bayesian statistical analysis, including its historical background, conjugate solutions, Bayesian hypothesis testing and decision-making, and Markov Chain Monte Carlo solutions The relevant advantages of using Bayesian statistical analysis, rather than the traditional frequentist approach, to address research problems Two alternative strategiesâ?"the a posteriori model selection strategy and the a priori parsimonious model selection strategy using AIC and DICâ?"to model selection and inference The ideas of generalized linear modeling (GLM), focusing on the most popular GLM of logistic regression An introduction to mixed-effects modeling in S-Plus® and R for analyzing natural resource data sets with varying error structures and dependencies Each statistical concept is accompanied by an illustration of its frequentist application in S-Plus® or R as well as its Bayesian application in WinBUGS. Brief introductions to these software packages are also provided to help the reader fully understand the concepts of the statistical methods that are presented throughout the book. Assuming only a minimal background in introductory statistics, Contemporary Bayesian and Frequentist Statistical Research Methods for Natural Resource Scientists is an ideal text for natural resource students studying statistical research methods at the upper-undergraduate or graduate level and also serves as a valuable problem-solving guide for natural resource scientists across a broad range of disciplines, including biology, wildlife management, forestry management, fisheries management, and the environmental sciences. Bestandsnummer des Verkäufers LU-9780470165041
Anzahl: 3 verfügbar
Anbieter: Grand Eagle Retail, Bensenville, IL, USA
Hardcover. Zustand: new. Hardcover. The first all-inclusive introduction to modern statistical research methods in the natural resource sciences The use of Bayesian statistical analysis has become increasingly important to natural resource scientists as a practical tool for solving various research problems. However, many important contemporary methods of applied statistics, such as generalized linear modeling, mixed-effects modeling, and Bayesian statistical analysis and inference, remain relatively unknown among researchers and practitioners in this field. Through its inclusive, hands-on treatment of real-world examples, Contemporary Bayesian and Frequentist Statistical Research Methods for Natural Resource Scientists successfully introduces the key concepts of statistical analysis and inference with an accessible, easy-to-follow approach. The book provides case studies illustrating common problems that exist in the natural resource sciences and presents the statistical knowledge and tools needed for a modern treatment of these issues. Subsequent chapter coverage features: An introduction to the fundamental concepts of Bayesian statistical analysis, including its historical background, conjugate solutions, Bayesian hypothesis testing and decision-making, and Markov Chain Monte Carlo solutions The relevant advantages of using Bayesian statistical analysis, rather than the traditional frequentist approach, to address research problems Two alternative strategiesathe a posteriori model selection strategy and the a priori parsimonious model selection strategy using AIC and DICato model selection and inference The ideas of generalized linear modeling (GLM), focusing on the most popular GLM of logistic regression An introduction to mixed-effects modeling in S-PlusA and R for analyzing natural resource data sets with varying error structures and dependencies Each statistical concept is accompanied by an illustration of its frequentist application in S-PlusA or R as well as its Bayesian application in WinBUGS. Brief introductions to these software packages are also provided to help the reader fully understand the concepts of the statistical methods that are presented throughout the book. Assuming only a minimal background in introductory statistics, Contemporary Bayesian and Frequentist Statistical Research Methods for Natural Resource Scientists is an ideal text for natural resource students studying statistical research methods at the upper-undergraduate or graduate level and also serves as a valuable problem-solving guide for natural resource scientists across a broad range of disciplines, including biology, wildlife management, forestry management, fisheries management, and the environmental sciences. The first all-inclusive introduction to modern statistical research methods in the natural resource sciences he use of Bayesian statistical analysis has become increasingly important to natural resource scientists as a practical tool for solving various research problems. Shipping may be from multiple locations in the US or from the UK, depending on stock availability. Bestandsnummer des Verkäufers 9780470165041
Anbieter: Chiron Media, Wallingford, Vereinigtes Königreich
Hardcover. Zustand: New. Bestandsnummer des Verkäufers 6666-WLY-9780470165041
Anzahl: Mehr als 20 verfügbar
Anbieter: THE SAINT BOOKSTORE, Southport, Vereinigtes Königreich
Hardback. Zustand: New. New copy - Usually dispatched within 4 working days. Bestandsnummer des Verkäufers B9780470165041
Anzahl: Mehr als 20 verfügbar