Sign in
Ridge Fusion in Statistical Learning
Journal article   Peer reviewed

Ridge Fusion in Statistical Learning

Bradley S Price, Charles J Geyer and Adam J Rothman
Journal of computational and graphical statistics, Vol.24(2), pp.439-454
2015-04-03

Abstract

Discriminant analysis Joint inverse covariance matrix estimation Model-based clustering Semi-supervised learning
This article proposes a penalized likelihood method to jointly estimate multiple precision matrices for use in quadratic discriminant analysis (QDA) and model-based clustering. We use a ridge penalty and a ridge fusion penalty to introduce shrinkage and promote similarity between precision matrix estimates. We use blockwise coordinate descent for optimization, and validation likelihood is used for tuning parameter selection. Our method is applied in QDA and semi-supervised model-based clustering.

Metrics

InCites Highlights

These are selected metrics from InCites Benchmarking & Analytics tool, related to this output

Collaboration types
Domestic collaboration
Citation topics
9 Mathematics
9.92 Statistical Methods
9.92.220 Nonparametric Regression
Web Of Science research areas
Statistics & Probability
ESI research areas
Mathematics

UN Sustainable Development Goals (SDGs)

This output has contributed to the advancement of the following goals:

#3 Good Health and Well-Being

Source: InCites

Details