International audienceIn a Hilbert space setting, for convex optimization, we analyze the convergence rate of a class of first-order algorithms involving inertial features. They can be interpreted as discrete time versions of inertial dynamics involving both viscous and Hessian-driven dampings. The geometrical damping driven by the Hessian intervenes in the dynamics in the form ∇ 2 f (x(t))ẋ(t). By treating this term as the time derivative of ∇f (x(t)), this gives, in discretized form, first-order algorithms in time and space. In addition to the convergence properties attached to Nesterov-type accelerated gradient methods, the algorithms thus obtained are new and show a rapid convergence towards zero of the gradients. On the basis of a regu...
In a Hilbert space $H$, based on inertial dynamics with dry friction damping, we introduce a new cla...
AbstractGiven H a real Hilbert space and Φ:H→R a smooth C2 function, we study the dynamical inertial...
We investigate convex differentiable optimization and explore the temporal discretization of damped ...
International audienceIn a Hilbert space setting, for convex optimization, we analyze the convergenc...
In a Hilbert space setting, for convex optimization, we analyze the convergence rate of a class of f...
In a Hilbert space setting, for convex optimization, we show the convergence of the iterates to opti...
International audienceSecond-order continuous-time dissipative dynamical systems with viscous and He...
International audienceIn a Hilbert framework, for general convex differentiable optimization, we con...
Second-order continuous-time dissipative dynamical systems with viscous and Hessian driven damping h...
In a Hilbert space setting, in order to develop fast first-order methods for convex optimization, we...
In a Hilbert space H, we introduce a new class of proximal-gradient algorithms with finite convergen...
First-order optimization algorithms can be considered as a discretization of ordinary differential e...
In a Hilbert space setting, we consider a new first order optimization algorithm which is obtained b...
International audienceWe introduce a new class of forward-backward algorithms for structured convex ...
In a Hilbertian framework, for the minimization of a general convex differentiable function f , we i...
In a Hilbert space $H$, based on inertial dynamics with dry friction damping, we introduce a new cla...
AbstractGiven H a real Hilbert space and Φ:H→R a smooth C2 function, we study the dynamical inertial...
We investigate convex differentiable optimization and explore the temporal discretization of damped ...
International audienceIn a Hilbert space setting, for convex optimization, we analyze the convergenc...
In a Hilbert space setting, for convex optimization, we analyze the convergence rate of a class of f...
In a Hilbert space setting, for convex optimization, we show the convergence of the iterates to opti...
International audienceSecond-order continuous-time dissipative dynamical systems with viscous and He...
International audienceIn a Hilbert framework, for general convex differentiable optimization, we con...
Second-order continuous-time dissipative dynamical systems with viscous and Hessian driven damping h...
In a Hilbert space setting, in order to develop fast first-order methods for convex optimization, we...
In a Hilbert space H, we introduce a new class of proximal-gradient algorithms with finite convergen...
First-order optimization algorithms can be considered as a discretization of ordinary differential e...
In a Hilbert space setting, we consider a new first order optimization algorithm which is obtained b...
International audienceWe introduce a new class of forward-backward algorithms for structured convex ...
In a Hilbertian framework, for the minimization of a general convex differentiable function f , we i...
In a Hilbert space $H$, based on inertial dynamics with dry friction damping, we introduce a new cla...
AbstractGiven H a real Hilbert space and Φ:H→R a smooth C2 function, we study the dynamical inertial...
We investigate convex differentiable optimization and explore the temporal discretization of damped ...