Title of article :
Robust mixture model cluster analysis using adaptive kernels
Author/Authors :
J. Andrew Howe&Hamparsum Bozdogan، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2013
Abstract :
The traditional mixture model assumes that a dataset is composed of several populations of Gaussian
distributions. In real life, however, data often do not fit the restrictions of normality very well. It is likely that
data from a single population exhibiting either asymmetrical or heavy-tail behavior could be erroneously
modeled as two populations, resulting in suboptimal decisions. To avoid these pitfalls, we generalize
the mixture model using adaptive kernel density estimators. Because kernel density estimators enforce no
functional form,wecan adapt to non-normal asymmetric, kurtotic, and tail characteristics in each population
independently. This, in effect, robustifies mixture modeling. We adapt two computational algorithms,
genetic algorithm with regularized Mahalanobis distance and genetic expectation maximization algorithm,
to optimize the kernel mixture model (KMM) and use results from robust estimation theory in order to
data-adaptively regularize both. Finally, we likewise extend the information criterion ICOMP to score the
KMM. We use these tools to simultaneously select the best mixture model and classify all observations
without making any subjective decisions. The performance of the KMM is demonstrated on two medical
datasets; in both cases, we recover the clinically determined group structure and substantially improve
patient classification rates over the Gaussian mixture model.
Keywords :
Mixture modeling , Non-parametric estimation , Robust estimation , Kernel density estimation , Unsupervised classification
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS