Date of Completion
7-10-2015
Embargo Period
7-8-2015
Keywords
clustering, incomplete data, missing data, model-based clustering
Major Advisor
Dipak K. Dey
Co-Major Advisor
Ofer Harel
Associate Advisor
Haim Bar
Associate Advisor
See above
Field of Study
Statistics
Degree
Doctor of Philosophy
Open Access
Open Access
Abstract
Several important questions have yet to be answered concerning clustering incomplete data. For example, how can disparate solutions from multiply imputed cluster results be resolved? Additionally, can a model-selection criterion be developed which can detect the correct number of LCA classes after multiple imputation has been performed? Finally, as cluster analysis depends on measures of uncertainty, what is the eect of missing values on such measures? This thesis presents new theorems, methodologies, and applications which demonstrate solutions to these pressing questions.
Recommended Citation
Larose, Chantal, "Model-Based Clustering of Incomplete Data" (2015). Doctoral Dissertations. 792.
https://digitalcommons.lib.uconn.edu/dissertations/792