Bayesian Applications in Environmental and Ecological Studies with R and Stan

Download or Read eBook Bayesian Applications in Environmental and Ecological Studies with R and Stan PDF written by Song S. Qian and published by CRC Press. This book was released on 2022-08-29 with total page 416 pages. Available in PDF, EPUB and Kindle.
Bayesian Applications in Environmental and Ecological Studies with R and Stan
Author :
Publisher : CRC Press
Total Pages : 416
Release :
ISBN-10 : 9781351018777
ISBN-13 : 1351018779
Rating : 4/5 (77 Downloads)

Book Synopsis Bayesian Applications in Environmental and Ecological Studies with R and Stan by : Song S. Qian

Book excerpt: Modern ecological and environmental sciences are dominated by observational data. As a result, traditional statistical training often leaves scientists ill-prepared for the data analysis tasks they encounter in their work. Bayesian methods provide a more robust and flexible tool for data analysis, as they enable information from different sources to be brought into the modelling process. Bayesian Applications in Evnironmental and Ecological Studies with R and Stan provides a Bayesian framework for model formulation, parameter estimation, and model evaluation in the context of analyzing environmental and ecological data. Features: An accessible overview of Bayesian methods in environmental and ecological studies Emphasizes the hypothetical deductive process, particularly model formulation Necessary background material on Bayesian inference and Monte Carlo simulation Detailed case studies, covering water quality monitoring and assessment, ecosystem response to urbanization, fisheries ecology, and more Advanced chapter on Bayesian applications, including Bayesian networks and a change point model Complete code for all examples, along with the data used in the book, are available via GitHub The book is primarily aimed at graduate students and researchers in the environmental and ecological sciences, as well as environmental management professionals. This is a group of people representing diverse subject matter fields, who could benefit from the potential power and flexibility of Bayesian methods.


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