Bayesian Demographic Estimation and Forecasting

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A01=John Bryant
A01=Junni L. Zhang
Accident Hump
Administrative data
advanced demographic forecasting methods
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Age Group_Uncategorized
Age Sex Interactions
Author_John Bryant
Author_Junni L. Zhang
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Bayesian Statistics
Birth Counts
Category1=Non-Fiction
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Category=JFFR
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Conditional Probability Distributions
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Coverage Ratios
Credible Intervals
CRPS
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Demographic Accounting
Demographic Arrays
Demographic Series
Demographic System
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Finite Population Quantities
Individual Level Datasets
Joint Probabilistic Model
Junni L. Zhang
Language_English
Lexis Diagrams
Local Level Model
migration statistics
missing data analysis
Model Checking
Narrow Credible Intervals
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Part III
population modeling
Population projections
Posterior Distribution
Posterior Medians
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R
R programming
Random Rounding
Small area estimation
softlaunch
Statistical demography
statistical inference
True Array
uncertainty quantification
Underlying Infant Mortality

Product details

  • ISBN 9781498762625
  • Weight: 584g
  • Dimensions: 156 x 234mm
  • Publication Date: 03 Jul 2018
  • Publisher: Taylor & Francis Inc
  • Publication City/Country: US
  • Product Form: Hardback
  • Language: English
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Bayesian Demographic Estimation and Forecasting presents three statistical frameworks for modern demographic estimation and forecasting. The frameworks draw on recent advances in statistical methodology to provide new tools for tackling challenges such as disaggregation, measurement error, missing data, and combining multiple data sources. The methods apply to single demographic series, or to entire demographic systems. The methods unify estimation and forecasting, and yield detailed measures of uncertainty.

The book assumes minimal knowledge of statistics, and no previous knowledge of demography. The authors have developed a set of R packages implementing the methods. Data and code for all applications in the book are available on www.bdef-book.com.

"This book will be welcome for the scientific community of forecasters…as it presents a new approach which has already given important results and which, in my opinion, will increase its importance in the future." ~Daniel Courgeau, Institut national d'études démographiques

John Bryant is a senior researcher at Statistics New Zealand. He has previously worked at the New Zealand Treasury, and at universities in New Zealand and Thailand. He has consulted for many international organizations, including UNICEF, the FAO, and the World Bank. His research interests include applied demography, data science, and Bayesian statistics.

Junni L. Zhang is an associate professor of statistics at Guanghua School of Management, Peking University. Her research interests include Bayesian statistics, text mining, and causal inference. She has extensive experience teaching undergraduate, graduate, MBA and executive courses, and is the author of Data Mining and Its Applications (in Chinese).

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