142nd APHA Annual Meeting and Exposition

Annual Meeting Recordings are now available for purchase

297311
Clustering incomplete data via normal mixture models and multiple imputation

142nd APHA Annual Meeting and Exposition (November 15 - November 19, 2014): http://www.apha.org/events-and-meetings/annual
Tuesday, November 18, 2014 : 4:50 PM - 5:10 PM

Chantal Larose , Department of Statistics, University of Connecticut, Storrs, CT
Dipak Dey, Ph.D. , College of Liberal Arts and Sciences, University of Connecticut, Storrs, CT
Ofer Harel, PhD , University of Connecticut, Storrs, CT
Clustering with normal mixture models describes groups in a dataset using normal distributions. However, existing methods require complete data.  Multiple imputation, a simulation-based approach to incomplete data, does not combine in a straightforward manner with clustering.  We have developed a new method to cluster incomplete data using multiple imputation.  We illustrate how our new method outperforms complete-case methodology with a simulation study, then demonstrate the utility of the method in a data application.

Learning Areas:

Biostatistics, economics

Learning Objectives:
Describe clusters in incomplete data using normal mixture models.

Presenting author's disclosure statement:

Qualified on the content I am responsible for because: I am a fourth year Ph.D. student at the University of Connecticut, working on a thesis which includes the clustering of incomplete data. Among my research interests are clustering and multiple imputation.
Any relevant financial relationships? No

I agree to comply with the American Public Health Association Conflict of Interest and Commercial Support Guidelines, and to disclose to the participants any off-label or experimental uses of a commercial product or service discussed in my presentation.