
Environmental Modelling with Contemporary Statistics
Learning, Directionality, and Space-Time Dynamics
Herausgeber: Ramoelo, Abel; Nagar, Priyanka; Ferreira, Johan; Erasmus, Barend; Bekker, Andriette
Versandkostenfrei!
Erscheint vorauss. 19. Mai 2026
122,99 €
inkl. MwSt.
This book places an emphasis upon statistical methodology, data interpretation, and futureproofing with the intention of advancing statistics for the environment, ecology, and environmental health, in addition to environmental theory and practice, via the application of reliable statistics. With a focus on advances in statistical methodology and application within the environmental sciences, the overarching purpose of this volume is to illuminate current trends, stimulate a focus on, and connect multidisciplinary domains originating from and within statistical analysis, development, and resear...
This book places an emphasis upon statistical methodology, data interpretation, and futureproofing with the intention of advancing statistics for the environment, ecology, and environmental health, in addition to environmental theory and practice, via the application of reliable statistics. With a focus on advances in statistical methodology and application within the environmental sciences, the overarching purpose of this volume is to illuminate current trends, stimulate a focus on, and connect multidisciplinary domains originating from and within statistical analysis, development, and research. Given that the contributions consist of current improvements and new innovations in climate and environmental science research that are based on statistical theory, researchers can derive inspiration for future advancements or similar analyses on other environmental data. Authored by internationally renowned scholars, this book is organised in three parts with Part I on Supervised and Unsupervised Learning, Part II on Directional Statistics, and Part III focusing on Spatial and temporal modelling. Primarily intended as a reference book for academic researchers and graduate level students in statistics as well as multidisciplinary domains, the chapters reflect a shared commitment to advancing methodological rigor while addressing real-world environmental concerns. They illustrate how environmental complexity drives the evolution of statistical thinking-and how statistical insight, in turn, informs meaningful action. Key Features: · Emphasises the ongoing necessity to progress basic statistical theory and explores its relevance to environmental research. · Contains multidisciplinary approaches and applications, whetting the appetite for a wider readership than only theoretical statistics. · Enhances the collective understanding of the ecosystem's diverse perspectives to ensure the welfare of present and future generations. · Written by renowned subject matter experts and researchers, making it appealing to scholars from diverse fields. · The statistical framework is not limited to a single methodology based on data complexity but promotes different techniques.