ABSTRACT

Due to recent theoretical findings and advances in statistical computing, there has been a rapid development of techniques and applications in the area of missing data analysis. Statistical Methods for Handling Incomplete Data covers the most up-to-date statistical theories and computational methods for analyzing incomplete data.

 

Features

  • Uses the mean score equation as a building block for developing the theory for missing data analysis
  • Provides comprehensive coverage of computational techniques for missing data analysis
  • Presents a rigorous treatment of imputation techniques, including multiple imputation fractional imputation
  • Explores the most recent advances of the propensity score method and estimation techniques for nonignorable missing data
  • Describes a survey sampling application
  • Updated with a new chapter on Data Integration
  • Now includes a chapter on Advanced Topics, including kernel ridge regression imputation and neural network model imputation

The book is primarily aimed at researchers and graduate students from statistics, and could be used as a reference by applied researchers with a good quantitative background. It includes many real data examples and simulated examples to help readers understand the methodologies.

chapter Chapter 1|4 pages

Introduction

chapter Chapter 2|26 pages

Likelihood-Based Approach

chapter Chapter 3|46 pages

Computation

chapter Chapter 4|28 pages

Imputation

chapter Chapter 5|26 pages

Multiple Imputation

chapter Chapter 6|30 pages

Fractional Imputation

chapter Chapter 7|38 pages

Propensity Scoring Approach

chapter Chapter 8|32 pages

Nonignorable Missing Data

chapter Chapter 9|34 pages

Longitudinal and Clustered Data

chapter Chapter 10|34 pages

Application to Survey Sampling

chapter Chapter 11|24 pages

Data Integration

chapter Chapter 12|20 pages

Advanced Topics