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GFKL
2004
Springer

Hierarchical Mixture Models for Nested Data Structures

13 years 10 months ago
Hierarchical Mixture Models for Nested Data Structures
A hierarchical extension of the finite mixture model is presented that can be used for the analysis of nested data structures. The model permits a simultaneous model-based clustering of lower- and higher-level units. Lower-level observations within higher-level units are assumed to be mutually independent given cluster membership of the higher-level units. The proposed model can be seen as a finite mixture model in which the prior class membership probabilities are assumed to be random, which makes it very similar to the grade-of-membership (GoM) model. The new model is illustrated with an example from organizational psychology.
Jeroen K. Vermunt, Jay Magidson
Added 01 Jul 2010
Updated 01 Jul 2010
Type Conference
Year 2004
Where GFKL
Authors Jeroen K. Vermunt, Jay Magidson
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