Sujit K. Sahu is a Professor of Statistics at the University of Southampton. He has co-authored more than 60 papers on Bayesian computation and modeling of spatio-temporal data. He has also contributed to writing specialist R packages for modeling and analysis of such data.
"""This book is a fine addition to the literature on linear modelling of spatio-temporal data, both geostatistical and areal unit; the linkage to the author’s R package bmstdr is particularly useful."" – Peter Diggle (Lancaster University, UK) ""This book provides a heroic solo effort by an author who is at the top of the game in Bayesian spatio-temporal analysis. The author is a leader in this community with regard to computation for fitting these demanding hierarchical models. This volume enables applied researchers to implement sound Bayesian modeling, rather than ""procedure-based"" analysis, to address challenging spatio-temporal issues. The fact that it emphasizes modeling in building bridges to the practitioner’s application is one of its strongest virtues. The book is well illustrated with lots of graphics and boxes of code, doing this primarily within bmstdr and ggplot, two well-developed R-packages. Attractively, the book emphasizes model assessment and comparison in predictive space, a necessity with spatio-temporal data. The book’s accessibility is much appreciated, exemplified by a useful ""jargon"" chapter for basic ideas, complemented with suitable figures. In summary, there are several competitors out there now but this book finds its own place in terms of bringing state-of the-art modeling approachably to exigent application."" – Alan Gelfand, Duke University, USA ""This book fills an essential gap in the literature about spatial-temporal data modelling. It provides a valuable gentle introduction to the theory and current practice of Bayesian modelling without the need for the reader to fully master the deep statistical theories underpinned by rigorous calculus-based mathematics. Every topic in the book is linked to elaborations in R that takes the reader to the practical level quickly. The book provides valuable insights on all the steps of spatial-temporal data analysis, from the initial exploration to the more refined models. The language is not too technical, and the students will really appreciate chapter 2, ‘Jargon of Spatial and Spatio-Temporal Modelling’ summarising all relevant definitions in the field. I teach a class on spatial statistics, and I will be happy to use this book as a suggested textbook."" – Giovanna Jona-Lasinio, Sapienza University of Rome, Italy""Bayesian spatio-temporal modelling is a complex research field with a daunting array of potential models to choose between and software packages to use. This book is an invaluable guide to statisticians and non-statisticians alike who are new to spatio-temporal modelling, by providing them with an accessible introduction to both Bayesian modelling ideas and the array of different types of spatio-temporal data structures and models that are available. Key to this is the array of practical examples that are illustrated throughout the book, which along with the discussion of the software options for fitting these models will enable others new to the field to easily apply the methods to their own data. The author is an expert in spatio-temporal modelling with long experience in this area with a diverse range of application specialities, and he provides clear and concise descriptions of all the key ideas and concepts."" – Duncan Lee, University of Glasgow, Scotland ""The quality of the paper and the printing is excellent. Many of the figures are in colors. Some are quite small, but with the scripts on the website you can recreate them yourself if needed. In summary, a good book with an emphasis on careful statistical modelling. On the publisher’s website (https://www.routledge.com/Bayesian-Modeling-of-Spatio-Temporal-Data-with-R/Sahu/p/book/9780367277987) the table of contents and more information are available."" – Paul Eilers, ISCB Book Reviews ""There are twelve chapters, two appendices, an excellent bibliography, and an extensive glossary in this book. The topics covered in this book are examples of spatio-temporal data, needed jargons for stochastic processes, exploratory data analytic methods, Bayesian inferential techniques, Bayesian computations, point referenced spatial-temporal data with modeling, area unit data modeling, Gaussian processes, statistical densities, and chapter exercises with solutions in the appendices. The bibliography contains an extensive and up to date. The readers ought to read first and recognize the terminologies before start reading this book. Some special features of thiswell written book are about ocean chlorophyll data analyses, COVID-19 data analytic results, isotropy,Matern covariance function,Monte Carlo integration,Hubbard Brook precipitation data analytic results, childhood vaccination data in Kenya, method of batching, and autoregressive processes among others."" – Ramalingam Shanmugam, Texas State University"