In this paper, we propose an interior-point method for linearly constrained optimization problems (possibly nonconvex). The method -- which we call the Hessian barrier algorithm (HBA) -- combines a forward Euler discretization of Hessian Riemannian gradient flows with an Armijo backtracking step-size policy. In this way, HBA can be seen as an explicit alternative to mirror descent (MD), and contains as special cases the affine scaling algorithm, regularized Newton processes, and several other iterative solution methods. Our main result is that, modulo a non-degeneracy condition, the algorithm converges to the problem's set of critical points; hence, in the convex case, the algorithm converges globally to the problem's minimum set. In the ca...
In this paper, we propose an interior-point method for linearly constrained and possibly nonconvex-o...
International audienceIn this paper, we propose an interior-point method for linearly constrained-an...
International audienceIn this paper, we propose an interior-point method for linearly constrained-an...
In this paper, we propose an interior-point method for linearly constrained optimization problems (p...
In this paper, we propose an interior-point method for linearly constrained optimization problems (p...
In this paper, we propose an interior-point method for linearly constrained optimization problems (p...
In this paper, we propose an interior-point method for linearly constrained and possibly nonconvex-o...
International audienceIn this paper, we propose an interior-point method for linearly constrained-an...
In this paper, we propose an interior-point method for linearly constrained optimization problems (p...
International audienceIn this paper, we propose an interior-point method for linearly constrained-an...
In this paper, we propose an interior-point method for linearly constrained and possibly nonconvex-o...
In this paper, we propose an interior-point method for linearly constrained and possibly nonconvex-o...
In this paper, we propose an interior-point method for linearly constrained and possibly nonconvex-o...
In this paper, we propose an interior-point method for linearly constrained and possibly nonconvex-o...
In this paper, we propose an interior-point method for linearly constrained and possibly nonconvex-o...
In this paper, we propose an interior-point method for linearly constrained and possibly nonconvex-o...
International audienceIn this paper, we propose an interior-point method for linearly constrained-an...
International audienceIn this paper, we propose an interior-point method for linearly constrained-an...
In this paper, we propose an interior-point method for linearly constrained optimization problems (p...
In this paper, we propose an interior-point method for linearly constrained optimization problems (p...
In this paper, we propose an interior-point method for linearly constrained optimization problems (p...
In this paper, we propose an interior-point method for linearly constrained and possibly nonconvex-o...
International audienceIn this paper, we propose an interior-point method for linearly constrained-an...
In this paper, we propose an interior-point method for linearly constrained optimization problems (p...
International audienceIn this paper, we propose an interior-point method for linearly constrained-an...
In this paper, we propose an interior-point method for linearly constrained and possibly nonconvex-o...
In this paper, we propose an interior-point method for linearly constrained and possibly nonconvex-o...
In this paper, we propose an interior-point method for linearly constrained and possibly nonconvex-o...
In this paper, we propose an interior-point method for linearly constrained and possibly nonconvex-o...
In this paper, we propose an interior-point method for linearly constrained and possibly nonconvex-o...
In this paper, we propose an interior-point method for linearly constrained and possibly nonconvex-o...
International audienceIn this paper, we propose an interior-point method for linearly constrained-an...
International audienceIn this paper, we propose an interior-point method for linearly constrained-an...