Ridge Fusion in Statistical Learning
classification
📊 stat.ML
cs.LGstat.CO
keywords
ridgeusedanalysisclusteringdiscriminantfusionlikelihoodmethod
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We propose a penalized likelihood method to jointly estimate multiple precision matrices for use in quadratic discriminant analysis and model based clustering. A ridge penalty and a ridge fusion penalty are used to introduce shrinkage and promote similarity between precision matrix estimates. Block-wise coordinate descent is used for optimization, and validation likelihood is used for tuning parameter selection. Our method is applied in quadratic discriminant analysis and semi-supervised model based clustering.
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