Missing data analysis in practice
Series: Chapman & Hall/CRC Interdisciplinary StatisticsPublication details: Boca Raton CRC Press 2016Description: xix, 210 pISBN:- 9781482211924
- 519.5 R2M4
Item type | Current library | Item location | Collection | Shelving location | Call number | Status | Date due | Barcode | |
---|---|---|---|---|---|---|---|---|---|
Books | Vikram Sarabhai Library | Rack 28-B / Slot 1415 (0 Floor, East Wing) | Non-fiction | General Stacks | 519.5 R2M4 (Browse shelf(Opens below)) | Available | 190734 |
Table of Contents:
1. Basic Concepts
1.1. Introduction
1.2. Definition of Missing Values
1.3. Missing Data Pattern
1.4. Missing Data Mechanism
1.5. Problems with Complete-Case Analysis
1.6. Analysis Approaches
1.7. Basic Statistical Concepts
1.8. A Chuckle or Two
2. Weighting Methods
2.1. Motivation
2.2. Adjustment Cell Method
2.3. Response Propensity Model
2.4. Example
2.5. Impact of Weights on Population Mean Estimates
2.6. Post-Stratification
2.7. Survey Weights
2.8. Alternative to Weighted Analysis
2.9. Inverse Probability Weighting
3. Imputation
3.1. Generation of Plausible Values
3.2. Hot Deck Imputation
3.3. Model Based Imputation
3.4. Example
3.5. Sequential Regression Imputation
4. Multiple Imputation
4.1. Introduction
4.2. Basic Combining Rule
4.3. Multivariate Hypothesis Testing
4.4. Combining Test Statistics
4.5. Basic Theory of Multiple Imputation
4.6. Extended Combining Rules
4.7. Some Practical Issues
4.8. Revisiting Examples
4.9. Example: St. Louis Risk Research Project
5. Regression Analysis
5.1. General Observations
5.2. Revisiting St. Louis Risk Research Example
5.3. Analysis of Variance
5.4. Survival Analysis Example
6. Longitudinal Analysis with Missing Values
6.1. Introduction
6.2. Imputation Model Assumption
6.3. Example
6.4. Practical Issues
6.5. Weighting Methods
6.6. Binary Example
7. Nonignorable Missing Data Mechanisms
7.1. Modeling Framework
7.2. EM-Algorithm
7.3. Inference under Selection Model
7.4. Inference under Mixture Model
7.5. Example
7.6. Practical Considerations
8. Other Applications
8.1. Measurement Error
8.2. Combining Information from Multiple Data Sources
8.3. Bayesian Inference from Finite Population
8.4. Causal Inference
8.5. Disclosure Limitation
9. Other Topics
9.1. Uncongeniality and Multiple Imputation
9.2. Multiple Imputation for Complex Surveys
9.3. Missing Values by Design
9.4. Replication Method for Variance Estimation
9.5. Final Thoughts
Missing Data Analysis in Practice provides practical methods for analyzing missing data along with the heuristic reasoning for understanding the theoretical underpinnings. Drawing on his 25 years of experience researching, teaching, and consulting in quantitative areas, the author presents both frequentist and Bayesian perspectives. He describes easy-to-implement approaches, the underlying assumptions, and practical means for assessing these assumptions. Actual and simulated data sets illustrate important concepts, with the data sets and codes available online.
The book underscores the development of missing data methods and their adaptation to practical problems. It mainly focuses on the traditional missing data problem. The author also shows how to use the missing data framework in many other statistical problems, such as measurement error, finite population inference, disclosure limitation, combing information from multiple data sources, and causal inference.
(https://www.crcpress.com/Missing-Data-Analysis-in-Practice/Raghunathan/9781482211924)
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