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  4. A proximal Newton framework for composite minimization: Graph learning without Cholesky decompositions and matrix inversions
 
conference paper

A proximal Newton framework for composite minimization: Graph learning without Cholesky decompositions and matrix inversions

Tran Dinh, Quoc  
•
Kyrillidis, Anastasios  
•
Cevher, Volkan  orcid-logo
2013
Proceedings of the 30th International Conference on Machine Learning
30th International Conference on Machine Learning

We propose an algorithmic framework for convex minimization problems of a composite function with two terms: a self-concordant function and a possibly nonsmooth regularization term. Our method is a new proximal Newton algorithm that features a local quadratic convergence rate. As a specific instance of our framework, we consider the sparse inverse covariance matrix estimation in graph learning problems. Via a careful dual formulation and a novel analytic step-size selection procedure, our approach for graph learning avoids Cholesky decompositions and matrix inversions in its iteration making it attractive for parallel and distributed implementations.

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Type
conference paper
Author(s)
Tran Dinh, Quoc  
Kyrillidis, Anastasios  
Cevher, Volkan  orcid-logo
Date Issued

2013

Published in
Proceedings of the 30th International Conference on Machine Learning
Start page

271

End page

279

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
LIONS  
Event nameEvent placeEvent date
30th International Conference on Machine Learning

Atlanta, GA, USA

June 16-19, 2013

Available on Infoscience
January 8, 2013
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/87702
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