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Practical Acceleration of the Condat–Vũ Algorithm
Derek Driggs
, Matthias Ehrhardt
, Carola-Bibiane Schönlieb
,
Junqi Tang
*
*
Corresponding author for this work
Mathematics
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peer-review
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Proximal Gradient Descent
100%
Composite Objective
33%
Machine Learning
16%
Computational Imaging
16%
Convergence Rate
16%
Optimal Convergence Rate
16%
Suboptimal Performance
16%
Primal-dual Algorithm
16%
Accelerated Proximal Gradient Method
16%
Computer Science
Proximal Gradient Descent
100%
Convergence Rate
33%
Machine Learning
16%
Learning System
16%
Approximate Algorithm
16%
Primal-Dual
16%
Mathematics
Convergence Rate
100%
Approximates
50%
Engineering
Gradient Descent
100%
Convergence Rate
33%
Learning System
16%
Chemical Engineering
Learning System
100%
Biochemistry, Genetics and Molecular Biology
Dynamics
100%