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Marc Teboulle

Researcher at Tel Aviv University

Publications -  120
Citations -  24576

Marc Teboulle is an academic researcher from Tel Aviv University. The author has contributed to research in topics: Convex optimization & Proximal Gradient Methods. The author has an hindex of 45, co-authored 118 publications receiving 20912 citations. Previous affiliations of Marc Teboulle include University of Maryland, Baltimore & Technion – Israel Institute of Technology.

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A Fast Iterative Shrinkage-Thresholding Algorithm for Linear Inverse Problems

TL;DR: A new fast iterative shrinkage-thresholding algorithm (FISTA) which preserves the computational simplicity of ISTA but with a global rate of convergence which is proven to be significantly better, both theoretically and practically.
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Fast Gradient-Based Algorithms for Constrained Total Variation Image Denoising and Deblurring Problems

TL;DR: A fast algorithm is derived for the constrained TV-based image deblurring problem with box constraints by combining an acceleration of the well known dual approach to the denoising problem with a novel monotone version of a fast iterative shrinkage/thresholding algorithm (FISTA).
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Proximal alternating linearized minimization for nonconvex and nonsmooth problems

TL;DR: A self-contained convergence analysis framework is derived and it is established that each bounded sequence generated by PALM globally converges to a critical point.
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Mirror descent and nonlinear projected subgradient methods for convex optimization

TL;DR: It is shown that the MDA can be viewed as a nonlinear projected-subgradient type method, derived from using a general distance-like function instead of the usual Euclidean squared distance, and derived in a simple way convergence and efficiency estimates.
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Convergence Analysis of a Proximal-Like Minimization Algorithm Using Bregman Functions

TL;DR: An alternative convergence proof of a proximal-like minimization algorithm using Bregman functions, recently proposed by Censor and Zenios, is presented and allows the establishment of a global convergence rate of the algorithm expressed in terms of function values.