Applied Multiple Imputation von Kristian Kleinke | Advantages, Pitfalls, New Developments and Applications in R | ISBN 9783030381639

Applied Multiple Imputation

Advantages, Pitfalls, New Developments and Applications in R

von Kristian Kleinke, Jost Reinecke, Daniel Salfrán und Martin Spiess
Mitwirkende
Autor / AutorinKristian Kleinke
Autor / AutorinJost Reinecke
Autor / AutorinDaniel Salfrán
Autor / AutorinMartin Spiess
Buchcover Applied Multiple Imputation | Kristian Kleinke | EAN 9783030381639 | ISBN 3-030-38163-3 | ISBN 978-3-030-38163-9

“This is an interesting book encouraging the application of the content presented.” (Maria de Ridder, ISCB News, iscb. info, Issue 70, December, 2020)

Applied Multiple Imputation

Advantages, Pitfalls, New Developments and Applications in R

von Kristian Kleinke, Jost Reinecke, Daniel Salfrán und Martin Spiess
Mitwirkende
Autor / AutorinKristian Kleinke
Autor / AutorinJost Reinecke
Autor / AutorinDaniel Salfrán
Autor / AutorinMartin Spiess

This book explores missing data techniques and provides a detailed and easy-to-read introduction to multiple imputation, covering the theoretical aspects of the topic and offering hands-on help with the implementation. It discusses the pros and cons of various techniques and concepts, including multiple imputation quality diagnostics, an important topic for practitioners. It also presents current research and new, practically relevant developments in the field, and demonstrates the use of recent multiple imputation techniques designed for situations where distributional assumptions of the classical multiple imputation solutions are violated. In addition, the book features numerous practical tutorials for widely used R software packages to generate multiple imputations (norm, pan and mice). The provided R code and data sets allow readers to reproduce all the examples and enhance their understanding of the procedures. This book is intended for social and health scientists and other quantitative researchers who analyze incompletely observed data sets, as well as master’s and PhD students with a sound basic knowledge of statistics.