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  • © 2021

A Course on Small Area Estimation and Mixed Models

Methods, Theory and Applications in R

  • Presents a rigorous mathematical description of statistical methodology for small area estimation
  • Compares and contrasts various statistical methodologies
  • Shows how to apply small area estimation techniques in surveys, providing the underlying R code

Part of the book series: Statistics for Social and Behavioral Sciences (SSBS)

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Table of contents (21 chapters)

  1. Front Matter

    Pages i-xx
  2. Small Area Estimation

    • Domingo Morales, María Dolores Esteban, Agustín Pérez, Tomáš Hobza
    Pages 1-11
  3. Design-Based Direct Estimation

    • Domingo Morales, María Dolores Esteban, Agustín Pérez, Tomáš Hobza
    Pages 13-40
  4. Design-Based Indirect Estimation

    • Domingo Morales, María Dolores Esteban, Agustín Pérez, Tomáš Hobza
    Pages 41-72
  5. Prediction Theory

    • Domingo Morales, María Dolores Esteban, Agustín Pérez, Tomáš Hobza
    Pages 73-89
  6. Linear Models

    • Domingo Morales, María Dolores Esteban, Agustín Pérez, Tomáš Hobza
    Pages 91-110
  7. Linear Mixed Models

    • Domingo Morales, María Dolores Esteban, Agustín Pérez, Tomáš Hobza
    Pages 111-153
  8. Nested Error Regression Models

    • Domingo Morales, María Dolores Esteban, Agustín Pérez, Tomáš Hobza
    Pages 155-187
  9. EBLUPs Under Nested Error Regression Models

    • Domingo Morales, María Dolores Esteban, Agustín Pérez, Tomáš Hobza
    Pages 189-207
  10. Mean Squared Error of EBLUPs

    • Domingo Morales, María Dolores Esteban, Agustín Pérez, Tomáš Hobza
    Pages 209-238
  11. EBPs Under Nested Error Regression Models

    • Domingo Morales, María Dolores Esteban, Agustín Pérez, Tomáš Hobza
    Pages 239-266
  12. EBLUPs Under Two-Fold Nested Error Regression Models

    • Domingo Morales, María Dolores Esteban, Agustín Pérez, Tomáš Hobza
    Pages 267-299
  13. EBPs Under Two-Fold Nested Error Regression Models

    • Domingo Morales, María Dolores Esteban, Agustín Pérez, Tomáš Hobza
    Pages 301-331
  14. Random Regression Coefficient Models

    • Domingo Morales, María Dolores Esteban, Agustín Pérez, Tomáš Hobza
    Pages 333-351
  15. EBPs Under Unit-Level Logit Mixed Models

    • Domingo Morales, María Dolores Esteban, Agustín Pérez, Tomáš Hobza
    Pages 353-389
  16. EBPs Under Unit-Level Two-Fold Logit Mixed Models

    • Domingo Morales, María Dolores Esteban, Agustín Pérez, Tomáš Hobza
    Pages 391-417
  17. Fay–Herriot Models

    • Domingo Morales, María Dolores Esteban, Agustín Pérez, Tomáš Hobza
    Pages 419-459
  18. Area-Level Temporal Linear Mixed Models

    • Domingo Morales, María Dolores Esteban, Agustín Pérez, Tomáš Hobza
    Pages 461-487
  19. Area-Level Spatio-Temporal Linear Mixed Models

    • Domingo Morales, María Dolores Esteban, Agustín Pérez, Tomáš Hobza
    Pages 489-507
  20. Area-Level Bivariate Linear Mixed Models

    • Domingo Morales, María Dolores Esteban, Agustín Pérez, Tomáš Hobza
    Pages 509-546

About this book

This advanced textbook explores small area estimation techniques, covers the underlying mathematical and statistical theory and offers hands-on support with their implementation. It presents the theory in a rigorous way and compares and contrasts various statistical methodologies, helping readers understand how to develop new methodologies for small area estimation. It also includes numerous sample applications of small area estimation techniques. The underlying R code is provided in the text and applied to four datasets that mimic data from labor markets and living conditions surveys, where the socioeconomic indicators include the small area estimation of total unemployment, unemployment rates, average annual household incomes and poverty indicators. Given its scope, the book will be useful for master and PhD students, and for official and other applied statisticians.

 

Authors and Affiliations

  • Miguel Hernández University of Elche, Elche, Spain

    Domingo Morales, María Dolores Esteban, Agustín Pérez

  • Czech Technical University in Prague, Prague, Czech Republic

    Tomáš Hobza

About the authors

Domingo Morales is a Professor of Statistics at the Miguel Hernández University of Elche, Spain. He has participated in two projects on Small Area Estimation (SAE) funded by the European Commission. Moreover, he has developed SAE methodologies and software for the Statistical Offices of Spain and Valencia. He has published more than 140 papers in statistics journals and taught courses on survey methodology and SAE at statistical institutes and universities. He has developed the R packages saery and mme.

María Dolores Esteban is a Professor of Statistics at the Miguel Hernández University of Elche, Spain. She has participated in two projects on Small Area Estimation (SAE) funded by the European Commission, and developed SAE methodologies and software for the Statistical Offices of Spain and Valencia. She has published more than 40 papers in statistics journals and taught courses on statistics and R at hospitals and universities. She has developed the R package saery.

Agustín Pérez is a Professor of Finance at the Miguel Hernández University of Elche, Spain. He has participated in one project on Small Area Estimation (SAE) funded by the European Commission. In addition, he has developed SAE methodologies and software for the Statistical Offices of Spain and Valencia. He has published more than 20 papers in statistics journals and taught courses on statistics and R at hospitals and universities. He has developed the R package saery.

Tomáš Hobza is an Associate Professor of Statistics at the Czech Technical University in Prague, Czech Republic, where he works in the fields of Information Theory and Small Area Estimation (SAE). He has developed SAE methodologies and software with applications to labor market and living conditions survey data. He has published more than 20 papers in statistics journals and taught courses on statistics at universities and clinical research companies.


Bibliographic Information

Buy it now

Buying options

eBook USD 69.99
Price excludes VAT (USA)
  • Available as EPUB and PDF
  • Read on any device
  • Instant download
  • Own it forever
Softcover Book USD 89.99
Price excludes VAT (USA)
  • Compact, lightweight edition
  • Dispatched in 3 to 5 business days
  • Free shipping worldwide - see info
Hardcover Book USD 139.99
Price excludes VAT (USA)
  • Durable hardcover edition
  • Dispatched in 3 to 5 business days
  • Free shipping worldwide - see info

Tax calculation will be finalised at checkout

Other ways to access