A comparison of methods for longitudinal data with nonignorable dropout with an application in systemic sclerosis
Longitudinal studies in the medical field often experience data loss resulting from subject dropout. The general practice is still dominated by the use of unproven ad-hoc techniques. Modeling methods for longitudinal data with absent values exist and are valid under different missingness as...
Main Author: | Schnitzer, Mireille |
---|---|
Other Authors: | Russell Steele (Internal/Supervisor) |
Format: | Others |
Language: | en |
Published: |
McGill University
2009
|
Subjects: | |
Online Access: | http://digitool.Library.McGill.CA:80/R/?func=dbin-jump-full&object_id=66862 |
Similar Items
-
Empirical Likelihood Methods in Nonignorable Covariate-Missing Data Problems
by: Xie, Yanmei
Published: (2019) -
Nonignorable nonresponse models for categorical survey data
by: Clarke, Paul Simon
Published: (1998) -
Nonignorable missing data in acoustic fish stock assessment
by: Hammond, Tim
Published: (1993) -
Development of a new disease activity index for Systemic Sclerosis using traditional and machine learning techniques
by: Julien, Marilyse
Published: (2008) -
Nonignorable nonresponse in the logistic regression analysis /
by: Hu, ChungLynn
Published: (1998)