In the present paper, we investigate a linearized p roximal algorithm (LPA) for solving a convex composite optimization problem. Each iteration of the LPA is a proximal minimization of the convex composite function with the inner function being linearized at the current iterate. The LPA has the attractive computational advantage that the solution of each subproblem is a singleton, which avoids the difficulty as in the Gauss-Newton method (GNM) of finding a solution with minimum norm among the set of minima of its subproblem, while still maintaining the same local convergence rate as that of the GNM. Under the assumptions of local weak sharp minima of order p (p ∈ [1,2]) and a quasi-regularity condition, we establish a local superlinear conv...
Minimizing a simple nonsmooth outer function composed with a smooth inner map offers a versatile fra...
ADInternational audienceA proximal linearized algorithm for minimizing difference of two convex func...
ADInternational audienceA proximal linearized algorithm for minimizing difference of two convex func...
Thesis (Ph.D.)--University of Washington, 2018Convex-composite optimization seeks to minimize f(x):=...
Thesis (Ph.D.)--University of Washington, 2018Convex-composite optimization seeks to minimize f(x):=...
We study the worst-case convergence rates of the proximal gradient method for minimizing the sum of ...
This paper proposes two proximal Newton methods for convex nonsmooth optimization problems in compos...
This paper proposes two proximal Newton methods for convex nonsmooth optimization problems in compos...
Composite optimization models consist of the minimization of the sum of a smooth (not necessarily co...
A fast parallelable Jacobi iteration type optimization method for non-smooth convex composite optimi...
We seek to solve convex optimization problems in composite form: minimize x∈Rn f(x): = g(x) + h(x), ...
In this thesis, we study first-order methods (FOMs) for solving three types of composite optimizatio...
Decentralized optimization is a powerful paradigm that finds applications in engineering and learnin...
Abstract The proximal gradient algorithm is an appealing approach in finding solutions of non-smooth...
Composite minimization involves a collection of smooth functions which are aggregated in a nonsmooth...
Minimizing a simple nonsmooth outer function composed with a smooth inner map offers a versatile fra...
ADInternational audienceA proximal linearized algorithm for minimizing difference of two convex func...
ADInternational audienceA proximal linearized algorithm for minimizing difference of two convex func...
Thesis (Ph.D.)--University of Washington, 2018Convex-composite optimization seeks to minimize f(x):=...
Thesis (Ph.D.)--University of Washington, 2018Convex-composite optimization seeks to minimize f(x):=...
We study the worst-case convergence rates of the proximal gradient method for minimizing the sum of ...
This paper proposes two proximal Newton methods for convex nonsmooth optimization problems in compos...
This paper proposes two proximal Newton methods for convex nonsmooth optimization problems in compos...
Composite optimization models consist of the minimization of the sum of a smooth (not necessarily co...
A fast parallelable Jacobi iteration type optimization method for non-smooth convex composite optimi...
We seek to solve convex optimization problems in composite form: minimize x∈Rn f(x): = g(x) + h(x), ...
In this thesis, we study first-order methods (FOMs) for solving three types of composite optimizatio...
Decentralized optimization is a powerful paradigm that finds applications in engineering and learnin...
Abstract The proximal gradient algorithm is an appealing approach in finding solutions of non-smooth...
Composite minimization involves a collection of smooth functions which are aggregated in a nonsmooth...
Minimizing a simple nonsmooth outer function composed with a smooth inner map offers a versatile fra...
ADInternational audienceA proximal linearized algorithm for minimizing difference of two convex func...
ADInternational audienceA proximal linearized algorithm for minimizing difference of two convex func...