Transcription of Dealing with missing data: Key assumptions and methods …
{{id}} {{{paragraph}}}
Technical Report No. 4 May 6, 2013 Dealing with missing data : Key assumptions andmethods for applied analysisMarina paper was published in fulfillment of the requirements for PM931 Directed Study in Health Policy and Managementunder Professor Cindy Christiansen s direction. Michal Horn y, Jake Morgan, Kyung Min Lee, and Meng-YunLin provided helpful reviews and 1 Contents Executive Summary .. 2 Acronyms .. 3 1. Introduction .. 4 2. missing data mechanisms .. 5 3. Patterns of 6 4. methods for handling missing data .. 6 Conventional methods .. 6 Listwise deletion (or complete case analysis): .. 6 Imputation methods .
Bayesian simulation methods and Hot-Deck imputation. Finally, section 5 explains how to carry out Multiple Imputation and Maximum Likelihood using SAS and STATA. The report ends with a summary of other software available for missing data and a list of the useful references that guided this report.
Domain:
Source:
Link to this page:
Please notify us if you found a problem with this document:
{{id}} {{{paragraph}}}