A biologist's guide to mathematical modeling in ecology and evolution

Thirty years ago, biologists could get by with a rudimentary grasp of mathematics and modeling. Not so today. In seeking to answer fundamental questions about how biological systems function and change over time, the modern biologist is as likely to rely on sophisticated mathematical and computer-based models as traditional fieldwork. In this book, Sarah Otto and Troy Day provide biology students with the tools necessary to both interpret models and to build their own. The book starts at an elementary level of mathematical modeling, assuming that the reader has had high school mathematics and first-year calculus. Otto and Day then gradually build in depth and complexity, from classic models in ecology and evolution to more intricate class-structured and probabilistic models. The authors provide primers with instructive exercises to introduce readers to the more advanced subjects of linear algebra and probability theory. Through examples, they describe how models have been used to understand such topics as the spread of HIV, chaos, the age structure of a country, speciation, and extinction. Ecologists and evolutionary biologists today need enough mathematical training to be able to assess the power and limits of biological models and to develop theories and models themselves. This innovative book will be an indispensable guide to the world of mathematical models for the next generation of biologists. • A how-to guide for developing new mathematical models in biology. • Provides step-by-step recipes for constructing and analyzing models. • Interesting biological applications. • Explores classical models in ecology and evolution. • Questions at the end of every chapter. • Primers cover important mathematical topics. • Exercises with answers. • Appendixes summarize useful rules. • Labs and advanced material available.

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Main Authors: Otto, Sarah P. 1967- autor/a, Day, Troy autor/a
Format: Texto biblioteca
Language:eng
Published: Princeton, New Jersey Princeton University Press 2007
Subjects:Ecología, Modelos matemáticos, Evolución (Biología),
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id KOHA-OAI-ECOSUR:53812
record_format koha
institution ECOSUR
collection Koha
country México
countrycode MX
component Bibliográfico
access En linea
Fisico
databasecode cat-ecosur
tag biblioteca
region America del Norte
libraryname Sistema de Información Bibliotecario de ECOSUR (SIBE)
language eng
topic Ecología
Modelos matemáticos
Evolución (Biología)
Ecología
Modelos matemáticos
Evolución (Biología)
spellingShingle Ecología
Modelos matemáticos
Evolución (Biología)
Ecología
Modelos matemáticos
Evolución (Biología)
Otto, Sarah P. 1967- autor/a
Day, Troy autor/a
A biologist's guide to mathematical modeling in ecology and evolution
description Thirty years ago, biologists could get by with a rudimentary grasp of mathematics and modeling. Not so today. In seeking to answer fundamental questions about how biological systems function and change over time, the modern biologist is as likely to rely on sophisticated mathematical and computer-based models as traditional fieldwork. In this book, Sarah Otto and Troy Day provide biology students with the tools necessary to both interpret models and to build their own. The book starts at an elementary level of mathematical modeling, assuming that the reader has had high school mathematics and first-year calculus. Otto and Day then gradually build in depth and complexity, from classic models in ecology and evolution to more intricate class-structured and probabilistic models. The authors provide primers with instructive exercises to introduce readers to the more advanced subjects of linear algebra and probability theory. Through examples, they describe how models have been used to understand such topics as the spread of HIV, chaos, the age structure of a country, speciation, and extinction. Ecologists and evolutionary biologists today need enough mathematical training to be able to assess the power and limits of biological models and to develop theories and models themselves. This innovative book will be an indispensable guide to the world of mathematical models for the next generation of biologists. • A how-to guide for developing new mathematical models in biology. • Provides step-by-step recipes for constructing and analyzing models. • Interesting biological applications. • Explores classical models in ecology and evolution. • Questions at the end of every chapter. • Primers cover important mathematical topics. • Exercises with answers. • Appendixes summarize useful rules. • Labs and advanced material available.
format Texto
topic_facet Ecología
Modelos matemáticos
Evolución (Biología)
author Otto, Sarah P. 1967- autor/a
Day, Troy autor/a
author_facet Otto, Sarah P. 1967- autor/a
Day, Troy autor/a
author_sort Otto, Sarah P. 1967- autor/a
title A biologist's guide to mathematical modeling in ecology and evolution
title_short A biologist's guide to mathematical modeling in ecology and evolution
title_full A biologist's guide to mathematical modeling in ecology and evolution
title_fullStr A biologist's guide to mathematical modeling in ecology and evolution
title_full_unstemmed A biologist's guide to mathematical modeling in ecology and evolution
title_sort biologist's guide to mathematical modeling in ecology and evolution
publisher Princeton, New Jersey Princeton University Press
publishDate 2007
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spelling KOHA-OAI-ECOSUR:538122023-03-18T12:26:25ZA biologist's guide to mathematical modeling in ecology and evolution Otto, Sarah P. 1967- autor/a Day, Troy autor/a textPrinceton, New Jersey Princeton University Press2007engThirty years ago, biologists could get by with a rudimentary grasp of mathematics and modeling. Not so today. In seeking to answer fundamental questions about how biological systems function and change over time, the modern biologist is as likely to rely on sophisticated mathematical and computer-based models as traditional fieldwork. In this book, Sarah Otto and Troy Day provide biology students with the tools necessary to both interpret models and to build their own. The book starts at an elementary level of mathematical modeling, assuming that the reader has had high school mathematics and first-year calculus. Otto and Day then gradually build in depth and complexity, from classic models in ecology and evolution to more intricate class-structured and probabilistic models. The authors provide primers with instructive exercises to introduce readers to the more advanced subjects of linear algebra and probability theory. Through examples, they describe how models have been used to understand such topics as the spread of HIV, chaos, the age structure of a country, speciation, and extinction. Ecologists and evolutionary biologists today need enough mathematical training to be able to assess the power and limits of biological models and to develop theories and models themselves. This innovative book will be an indispensable guide to the world of mathematical models for the next generation of biologists. • A how-to guide for developing new mathematical models in biology. • Provides step-by-step recipes for constructing and analyzing models. • Interesting biological applications. • Explores classical models in ecology and evolution. • Questions at the end of every chapter. • Primers cover important mathematical topics. • Exercises with answers. • Appendixes summarize useful rules. • Labs and advanced material available.Incluye bibliografía e índice: páginas 725-732Preface.. Chapter 1: Mathematical Modeling in Biology.. 1.1 Introduction.. 1.2 HIV.. 1.3 Models of HIV/AIDS.. 1.4 Concluding Message.. Chapter 2: How to Construct a Model.. 2.1 Introduction.. 2.2 Formulate the Question.. 2.3 Determine the Basic Ingredients.. 2.4 Qualitatively Describe the Biological System.. 2.5 Quantitatively Describe the Biological System.. 2.6 Analyze the Equations.. 2.7 Checks and Balances.. 2.8 Relate the Results Back to the Question.. 2.9 Concluding Message.. Chapter 3: Deriving Classic Models in Ecology and Evolutionary Biology.. 3.1 Introduction.. 3.2 Exponential and Logistic Models of Population Growth.. 3.3 Haploid and Diploid Models of Natural Selection.. 3.4 Models of Interactions among Species.. 3.5 Epidemiological Models of Disease Spread.. 3.6 Working Backward--Interpreting Equations in Terms of the Biology.. 3.7 Concluding Message.. Primer 1: Functions and Approximations.. P1.1 Functions and Their Forms.. P1.2 Linear Approximations.. P1.3 The Taylor Series.. Chapter 4: Numerical and Graphical Techniques--Developing a Feeling for Your Model.. 4.1 Introduction.. 4.2 Plots of Variables Over Time.. 4.3 Plots of Variables as a Function of the Variables Themselves.. 4.4 Multiple Variables and Phase-Plane Diagrams.. 4.5 Concluding Message.. Chapter 5: Equilibria and Stability Analyses--One-Variable Models.. 5.1 Introduction.. 5.2 Finding an Equilibrium.. 5.3 Determining Stability.. 5.4 Approximations.. 5.5 Concluding Message.. Chapter 6: General Solutions and Transformations--One-Variable Models.. 6.1 Introduction.. 6.2 Transformations.. 6.3 Linear Models in Discrete Time.. 6.4 Nonlinear Models in Discrete Time.. 6.5 Linear Models in Continuous Time.. 6.6 Nonlinear Models in Continuous Time.. 6.7 Concluding Message.. Primer 2: Linear Algebra.. P2.1 An Introduction to Vectors and Matrices.. P2.2 Vector and Matrix Addition.. P2.3 Multiplication by a ScalarP2.4 Multiplication of Vectors and Matrices.. P2.5 The Trace and Determinant of a Square Matrix.. P2.6 The Inverse.. P2.7 Solving Systems of Equations.. P2.8 The Eigenvalues of a Matrix.. P2.9 The Eigenvectors of a Matrix.. Chapter 7: Equilibria and Stability Analyses--Linear Models with Multiple Variables.. 7.1 Introduction.. 7.2 Models with More than One Dynamic Variable.. 7.3 Linear Multivariable Models.. 7.4 Equilibria and Stability for Linear Discrete-Time Models.. 7.5 Concluding Message.. Chapter 8: Equilibria and Stability Analyses--Nonlinear Models with Multiple Variables.. 8.1 Introduction.. 8.2 Nonlinear Multiple-Variable Models.. 8.3 Equilibria and Stability for Nonlinear Discrete-Time Models.. 8.4 Perturbation Techniques for Approximating Eigenvalues.. 8.5 Concluding Message.. Chapter 9: General Solutions and Tranformations--Models with Multiple Variables.. 9.1 Introduction.. 9.2 Linear Models Involving Multiple Variables.. 9.3 Nonlinear Models Involving Multiple Variables.. 9.4 Concluding Message.. Chapter 10: Dynamics of Class-Structured Populations.. 10.1 Introduction.. 10.2 Constructing Class-Structured Models.. 10.3 Analyzing Class-Structured Models.. 10.4 Reproductive Value and Left Eigenvectors.. 10.5 The Effect of Parameters on the Long-Term Growth Rate.. 10.6 Age-Structured Models--The Leslie Matrix.. 10.7 Concluding Message.. Chapter 11: Techniques for Analyzing Models with Periodic Behavior.. 11.1 Introduction.. 11.2 What Are Periodic Dynamics?.. 11.3 Composite Mappings.. 11.4 Hopf Bifurcations.. 11.5 Constants of Motion.. 11.6 Concluding Message.. Chapter 12: Evolutionary Invasion Analysis.. 12.1 Introduction.. 12.2 Two Introductory Examples.. 12.3 The General Technique of Evolutionary Invasion Analysis.. 12.4 Determining How the ESS Changes as a Function of Parameters.. 12.5 Evolutionary Invasion Analyses in Class-Structured Populations.. 12.6 Concluding MessagePrimer 3: Probability Theory.. P3.1 An Introduction to Probability.. P3.2 Conditional Probabilities and Bayes' Theorem.. P3.3 Discrete Probability Distributions.. P3.4 Continuous Probability Distributions.. P3.5 The (Insert Your Name Here Distribution.. Chapter 13: Probabilistic Models.. 13.1 Introduction.. 13.2 Models of Population Growth.. 13.3 Birth-Death Models.. 13.4 Wright-Fisher Model of Allele Frequency Change.. 13.5 Moran Model of Allele Frequency Change.. 13.6 Cancer Development.. 13.7 Cellular Automata--A Model of Extinction and Recolonization.. 13.8 Looking Backward in Time--Coalescent Theory.. 13.9 Concluding Message.. Chapter 14: Analyzing Discrete Stochastic Models.. 14.1 Introduction.. 14.2 Two-State Markov Models.. 14.3 Multistate Markov Models.. 14.4 Birth-Death Models.. 14.5 Branching Processes.. 14.6 Concluding Message.. Chapter 15: Analyzing Continuous Stochastic Models--Diffusion in Time and Space.. 15.1 Introduction.. 15.2 Constructing Diffusion Models.. 15.3 Analyzing the Diffusion Equation with Drift.. 15.4 Modeling Populations in Space Using the Diffusion Equation.. 15.5 Concluding Message.. Epilogue: The Art of Mathematical Modeling in Biology.. Appendix 1: Commonly Used Mathematical Rules.. A1.1 Rules for Algebraic Functions.. A1.2 Rules for Logarithmic and Exponential Functions.. A1.3 Some Important Sums.. A1.4 Some Important Products.. A1.5 Inequalities.. Appendix 2: Some Important Rules from Calculus.. A2.1 Concepts.. A2.2 Derivatives.. A2.3 Integrals.. A2.4 Limits.. Appendix 3: The Perron-Frobenius Theorem.. A3.1: Definitions.. A3.2: The Perron-Frobenius Theorem.. Appendix 4: Finding Maxima and Minima of Functions.. A4.1 Functions with One Variable.. A4.2 Functions with Multiple Variables.. Appendix 5: Moment-Generating Functions.. Index of Definitions, Recipes, and Rules.. General IndexThirty years ago, biologists could get by with a rudimentary grasp of mathematics and modeling. Not so today. In seeking to answer fundamental questions about how biological systems function and change over time, the modern biologist is as likely to rely on sophisticated mathematical and computer-based models as traditional fieldwork. In this book, Sarah Otto and Troy Day provide biology students with the tools necessary to both interpret models and to build their own. The book starts at an elementary level of mathematical modeling, assuming that the reader has had high school mathematics and first-year calculus. Otto and Day then gradually build in depth and complexity, from classic models in ecology and evolution to more intricate class-structured and probabilistic models. The authors provide primers with instructive exercises to introduce readers to the more advanced subjects of linear algebra and probability theory. Through examples, they describe how models have been used to understand such topics as the spread of HIV, chaos, the age structure of a country, speciation, and extinction. Ecologists and evolutionary biologists today need enough mathematical training to be able to assess the power and limits of biological models and to develop theories and models themselves. This innovative book will be an indispensable guide to the world of mathematical models for the next generation of biologists. • A how-to guide for developing new mathematical models in biology. • Provides step-by-step recipes for constructing and analyzing models. • Interesting biological applications. • Explores classical models in ecology and evolution. • Questions at the end of every chapter. • Primers cover important mathematical topics. • Exercises with answers. • Appendixes summarize useful rules. • Labs and advanced material available.EcologíaModelos matemáticosEvolución (Biología)URN:ISBN:0691123446URN:ISBN:9780691123448