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Introduction to probability and statistics for ecosystem managers: simulation and resampling

Explores computer-intensive probability and statistics for ecosystem management decision making Simulation is an accessible way to explain probability and stochastic model behavior to beginners. This book introduces probability and statistics to future and practicing ecosystem managers by providin...

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Autor principal: Haas, Timothy C
Lenguaje:eng
Publicado: John Wiley & Sons 2013
Materias:
Acceso en línea:http://cds.cern.ch/record/2311807
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author Haas, Timothy C
author_facet Haas, Timothy C
author_sort Haas, Timothy C
collection CERN
description Explores computer-intensive probability and statistics for ecosystem management decision making Simulation is an accessible way to explain probability and stochastic model behavior to beginners. This book introduces probability and statistics to future and practicing ecosystem managers by providing a comprehensive treatment of these two areas. The author presents a self-contained introduction for individuals involved in monitoring, assessing, and managing ecosystems and features intuitive, simulation-based explanations of probabilistic and statistical concepts. Mathematical programming details are provided for estimating ecosystem model parameters with Minimum Distance, a robust and computer-intensive method. The majority of examples illustrate how probability and statistics can be applied to ecosystem management challenges. There are over 50 exercises - making this book suitable for a lecture course in a natural resource and/or wildlife management department, or as the main text in a program of self-study. Key features: Reviews different approaches to wildlife and ecosystem management and inference. Uses simulation as an accessible way to explain probability and stochastic model behavior to beginners. Covers material from basic probability through to hierarchical Bayesian models and spatial/ spatio-temporal statistical inference. Provides detailed instructions for using R, along with complete R programs to recreate the output of the many examples presented. Provides an introduction to Geographic Information Systems (GIS) along with examples from Quantum GIS, a free GIS software package. A companion website featuring all R code and data used throughout the book. Solutions to all exercises are presented along with an online intelligent tutoring system that supports readers who are using the book for self-study.
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spelling cern-23118072021-04-21T18:51:50Zhttp://cds.cern.ch/record/2311807engHaas, Timothy CIntroduction to probability and statistics for ecosystem managers: simulation and resamplingMathematical Physics and MathematicsExplores computer-intensive probability and statistics for ecosystem management decision making Simulation is an accessible way to explain probability and stochastic model behavior to beginners. This book introduces probability and statistics to future and practicing ecosystem managers by providing a comprehensive treatment of these two areas. The author presents a self-contained introduction for individuals involved in monitoring, assessing, and managing ecosystems and features intuitive, simulation-based explanations of probabilistic and statistical concepts. Mathematical programming details are provided for estimating ecosystem model parameters with Minimum Distance, a robust and computer-intensive method. The majority of examples illustrate how probability and statistics can be applied to ecosystem management challenges. There are over 50 exercises - making this book suitable for a lecture course in a natural resource and/or wildlife management department, or as the main text in a program of self-study. Key features: Reviews different approaches to wildlife and ecosystem management and inference. Uses simulation as an accessible way to explain probability and stochastic model behavior to beginners. Covers material from basic probability through to hierarchical Bayesian models and spatial/ spatio-temporal statistical inference. Provides detailed instructions for using R, along with complete R programs to recreate the output of the many examples presented. Provides an introduction to Geographic Information Systems (GIS) along with examples from Quantum GIS, a free GIS software package. A companion website featuring all R code and data used throughout the book. Solutions to all exercises are presented along with an online intelligent tutoring system that supports readers who are using the book for self-study.John Wiley & Sonsoai:cds.cern.ch:23118072013
spellingShingle Mathematical Physics and Mathematics
Haas, Timothy C
Introduction to probability and statistics for ecosystem managers: simulation and resampling
title Introduction to probability and statistics for ecosystem managers: simulation and resampling
title_full Introduction to probability and statistics for ecosystem managers: simulation and resampling
title_fullStr Introduction to probability and statistics for ecosystem managers: simulation and resampling
title_full_unstemmed Introduction to probability and statistics for ecosystem managers: simulation and resampling
title_short Introduction to probability and statistics for ecosystem managers: simulation and resampling
title_sort introduction to probability and statistics for ecosystem managers: simulation and resampling
topic Mathematical Physics and Mathematics
url http://cds.cern.ch/record/2311807
work_keys_str_mv AT haastimothyc introductiontoprobabilityandstatisticsforecosystemmanagerssimulationandresampling