Description: Building a Platform for Data-Driven Pandemic Prediction by Marcos O. Prates, Thais Paiva, Vinicius D. Mayrink, Dani Gamerman Estimated delivery 3-12 business days Format Hardcover Condition Brand New Description This book is about building platforms for pandemic prediction. It provides an overview of probabilistic prediction for pandemic modeling based on a data-driven approach. It also provides guidance on building platforms with currently available technology using tools such as R, Shiny, and interactive plotting programs. Publisher Description This book is about building platforms for pandemic prediction. It provides an overview of probabilistic prediction for pandemic modeling based on a data-driven approach. It also provides guidance on building platforms with currently available technology using tools such as R, Shiny, and interactive plotting programs.The focus is on the integration of statistics and computing tools rather than on an in-depth analysis of all possibilities on each side. Readers can follow different reading paths through the book, depending on their needs. The book is meant as a basis for further investigation of statistical modelling, implementation tools, monitoring aspects, and software functionalities.Features: A general but parsimonious class of models to perform statistical prediction for epidemics, using a Bayesian approach Implementation of automated routines to obtain daily prediction results How to interactively visualize the model results Strategies for monitoring the performance of the predictions and identifying potential issues in the results Discusses the many decisions required to develop and publish online platforms Supplemented by an R package and its specific functionalities to model epidemic outbreaksThe book is geared towards practitioners with an interest in the development and presentation of results in an online platform of statistical analysis of epidemiological data. The primary audience includes applied statisticians, biostatisticians, computer scientists, epidemiologists, and professionals interested in learning more about epidemic modelling in general, including the COVID-19 pandemic, and platform building.The authors are professors at the Statistics Department at Universidade Federal de Minas Gerais. Their research records exhibit contributions applied to a number of areas of Science, including Epidemiology. Their research activities include books published with Chapman and Hall/CRC and papers in high quality journals. They have also been involved with academic management of graduate programs in Statistics and one of them is currently the President of the Brazilian Statistical Association. Author Biography Dani Gamerman was Professor of Statistics at UFRJ from 1996 to 2019. He is currently Professor Emeritus at UFRJ since 2021 and Visiting Professor at UFMG since 2019. Director of the Graduate Program in Statistics at UFRJ (1999-2006 and 2015-2019). Published papers at JRSSB, Biometrika, Statistics and Computing, Bayesian Analysis, Journal of Multivariate Analysis, Applied Statistics and other journals. Author of books Monte Carlo Markov Chain: Stochastic Simulation for Bayesian Inference and Statistical Inference: an Integrated Approach, both with Chapman & Hall in their 2nd edition. Supervised 19 M.Sc. and 18 Ph.D. students. Visiting professor of a number of academic institution world-wide. Delivered seminars at many scientific meetings and universities world-wide, including plenary talks at a Valencia meeting and an ISBA world meeting. Editor of 5 statistical journals. Organized many statistical conferences in Brazil. Marcos Prates obtained his bachelors in 2006 in the Computational Mathematics program at the Universidade Federal de Minas Gerais (UFMG) and a masters in Statistics in 2008 from the same institution. In 2011 he received his Ph.D. in Statistics from the University of Connecticut and was a Visiting Professor in the same institution from 2019 to 2020. Currently, he is an Associate Professor at UFMG. His main research areas are Bayesian Statistics, Generalised Linear Mixed Models, Machine Learning, and Spatial Statistics. He was Director of the Graduate Program in Statistics in UFMG (2016-2018), was the Secretary for ISBRA, the Brazilian chapter of ISBA (2015-2016), and currently is the President of the Brazilian Statistical Association (2020-2022).Thais Paiva obtained a bachelor degree in Actuarial Science from the Universidade Federal de Minas Gerais (UFMG) in 2008, and a Masters in Statistics from the same university in 2010. She earned a PhD degree in Statistics at Duke University in 2014. Since 2016, she has been an Assistant Professor in the Statistics Department at UFMG, working actively on the Actuarial Science undergraduate program and on the Statistics graduate program. Her main research interests are Bayesian Statistics, Imputation Methods for Missing Data, Data Confidentiality and Spatial Statistics.Vinicius Mayrink is an Associate Professor in the Department of Statistics at the Universidade Federal de Minas Gerais (UFMG) in Brazil. He received: his Ph.D. degree in the Department of Statistical Science at Duke University (USA, 2011), B.Sc. degree in Statistics from UFMG (2004), M.Sc. degree in Statistics from the Universidade Federal do Rio de Janeiro (2006) and a second M.Sc. degree in Statistics at Duke University (2009). Vinicius is currently the sub-Director of the Graduate Program in Statistics of the UFMG (2021-2023). He was a member (treasurer, 2015-2016) of the administrative board of ISBRA (the Brazilian chapter of ISBA). His research interests include: Bayesian Inference, Multivariate Analysis, Spatial Statistics, Survival Analysis and Statistical Modeling in Bioinformatics. Details ISBN 0367709996 ISBN-13 9780367709990 Title Building a Platform for Data-Driven Pandemic Prediction Author Marcos O. Prates, Thais Paiva, Vinicius D. Mayrink, Dani Gamerman Format Hardcover Year 2021 Pages 382 Publisher Taylor & Francis Ltd GE_Item_ID:139823474; About Us Grand Eagle Retail is the ideal place for all your shopping needs! With fast shipping, low prices, friendly service and over 1,000,000 in stock items - you're bound to find what you want, at a price you'll love! Shipping & Delivery Times Shipping is FREE to any address in USA. Please view eBay estimated delivery times at the top of the listing. Deliveries are made by either USPS or Courier. We are unable to deliver faster than stated. International deliveries will take 1-6 weeks. NOTE: We are unable to offer combined shipping for multiple items purchased. This is because our items are shipped from different locations. 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Price: 169.34 USD
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ISBN-13: 9780367709990
Book Title: Building a Platform for Data-Driven Pandemic Prediction
Number of Pages: 382 Pages
Publication Name: Building a Platform for Data-Driven Pandemic Prediction : From Data Modelling to Visualisation - the CovidLP Project
Language: English
Publisher: CRC Press LLC
Subject: Public Health, Infectious Diseases, Statistics, Epidemiology
Publication Year: 2021
Type: Textbook
Item Weight: 23.3 Oz
Subject Area: Business & Economics, Medical
Author: Marcos O. Prates
Item Length: 9.2 in
Item Width: 6.1 in
Format: Hardcover