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This is an entry-level book on Bayesian statistics written in a casual, and conversational tone. The authors walk a reader through many sample problems step-by-step to provide those with little background in math or statistics with the vocabulary, notation, and understanding of the calculations used in many Bayesian problems.
Therese Donovan is a wildlife biologist with the U.S. Geological Survey, Vermont Cooperative Fish and Wildlife Research Unit. Based in the Rubenstein School of Environment and Natural Resources at the University of Vermont, Therese teaches graduate courses on ecological modeling and conservation biology. She works with a variety of student and professional collaborators on research problems focused on the conservation of vertebrates. Therese is the Director of the Vermont Cooperative Fish and Wildlife Unit Spreadsheet Project, a suite of on-line tutorials in Excel and R for modeling and analysis of wildlife populations. She lives in Vermont with her husband, Peter, and two children, Evan and Ana. Ruth Mickey is a Professor Emerita of Statistics at the University of Vermont. Most of Ruth's career was spent in the Department of Mathematics and Statistics, where she taught courses in Applied Multivariate Analysis, Categorical Data, Survey Sampling, Analysis of Variance and Regression, and Probability. She served as an advisor or committee member of numerous MS and PhD committees over a broad range of academic disciplines. She worked on the development of statistical methods and applications to advance public health and natural resources issues throughout her career.
Show moreThis is an entry-level book on Bayesian statistics written in a casual, and conversational tone. The authors walk a reader through many sample problems step-by-step to provide those with little background in math or statistics with the vocabulary, notation, and understanding of the calculations used in many Bayesian problems.
Therese Donovan is a wildlife biologist with the U.S. Geological Survey, Vermont Cooperative Fish and Wildlife Research Unit. Based in the Rubenstein School of Environment and Natural Resources at the University of Vermont, Therese teaches graduate courses on ecological modeling and conservation biology. She works with a variety of student and professional collaborators on research problems focused on the conservation of vertebrates. Therese is the Director of the Vermont Cooperative Fish and Wildlife Unit Spreadsheet Project, a suite of on-line tutorials in Excel and R for modeling and analysis of wildlife populations. She lives in Vermont with her husband, Peter, and two children, Evan and Ana. Ruth Mickey is a Professor Emerita of Statistics at the University of Vermont. Most of Ruth's career was spent in the Department of Mathematics and Statistics, where she taught courses in Applied Multivariate Analysis, Categorical Data, Survey Sampling, Analysis of Variance and Regression, and Probability. She served as an advisor or committee member of numerous MS and PhD committees over a broad range of academic disciplines. She worked on the development of statistical methods and applications to advance public health and natural resources issues throughout her career.
Show moreSection 1
Basics of Probability
1: Introduction to Probability
2: Joint, Marginal, and Conditional Probability
Section 2
Bayes' Theorem and Bayesian Inference
3: Bayes' Theorem
4: Bayesian Inference
5: The Author Problem - Bayesian Inference with Two Hypotheses
6: The Birthday Problem: Bayesian Inference with Multiple Discrete
Hypotheses
7: The Portrait Problem: Bayesian Inference with Joint
Likelihood
Section 3
Probability Functions
8: Probability Mass Functions
9: Probability Density Functions
Section 4
Bayesian Conjugates
10: The White House Problem: The Beta-Binomial Conjugate
11: The Shark Attack Problem: The Gamma-Poisson Conjugate
12: The Maple Syrup Problem: The Normal-Normal Conjugate
Section 5
Markov Chain Monte Carlo
13: The Shark Attack Problem Revisited: MCMC with the Metropolis
Algorithm
14: MCMC Diagnostic Approaches
15: The White House Problem Revisited: MCMC with the
Metropolis-Hastings Algorithm
16: The Maple Syrup Problem Revisited: MCMC with Gibbs Sampling
Section 6
Applications
17: The Survivor Problem: Simple Linear Regression with MCMC
18: The Survivor Problem Continued: Introduction to Bayesian Model
Selection
19: The Lorax Problem: Introduction to Bayesian Networks
20: The Once-ler Problem: Introduction to Decision Trees
Appendices
Appendix 1: The Beta-Binomial Conjugate Solution
Appendix 2: The Gamma-Poisson Conjugate Solution
Appendix 3: The Normal-Normal Conjugate Solution
Appendix 4: Conjugate Solutions for Simple Linear Regression
Appendix 5: The Standardization of Regression Data
Therese Donovan is a wildlife biologist with the U.S. Geological
Survey, Vermont Cooperative Fish and Wildlife Research Unit. Based
in the Rubenstein School of Environment and Natural Resources at
the University of Vermont, Therese teaches graduate courses on
ecological modeling and conservation biology. She works with a
variety of student and professional collaborators on research
problems focused on the conservation of vertebrates. Therese is the
Director of
the Vermont Cooperative Fish and Wildlife Unit Spreadsheet Project,
a suite of on-line tutorials in Excel and R for modeling and
analysis of wildlife populations. She lives in Vermont with her
husband, Peter, and two children, Evan and Ana.
Ruth Mickey is a Professor Emerita of Statistics at the University
of Vermont. Most of Ruth's career was spent in the Department of
Mathematics and Statistics, where she taught courses in Applied
Multivariate Analysis, Categorical Data, Survey Sampling, Analysis
of Variance and Regression, and Probability. She served as an
advisor or committee member of numerous MS and PhD committees over
a broad range of academic disciplines. She worked on the
development of statistical methods and
applications to advance public health and natural resources issues
throughout her career.
While reading this book, I joined the authors on a learning
endeavor thanks to their honesty and intellectual vulnerability.
Their lack of experience with Bayesian statistics helps them to be
effective communicators . . . If you are interested in starting
your Bayesian journey, then Bayesian Statistics for Beginners is an
excellent place to begin.
*Taylor Saucier, Department of Wildlife, Fisheries, and
Aquaculture, Mississippi State University, The Journal of Wildlife
Management*
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