Many problems in neural computation and statistical learning involve optimizations with nonnegativity constraints. In this article, we study convex problems in quadratic programming where the optimization is confined to an axis-aligned region in the nonnegative orthant. For these problems, we derive multiplicative updates that improve the value of the objective function at each iteration and converge monotonically to the global minimum. The updates have a simple closed form and do not involve any heuristics or free parameters that must be tuned to ensure convergence. Despite their simplicity, they differ strikingly in form from other multiplicative updates used in machine learning.We provide complete proofs of convergence for these updates ...
International audienceMultiplicative update algorithms have encountered a great success to solve opt...
In this paper, we study the problem of minimizing a multilinear objective function over the discrete...
Projet PROMATHIn this paper we study the convergence of sequential quadratic programming algorithms ...
Many problems in neural computation and statistical learning involve optimizations with nonnegativit...
We derive multiplicative updates for solving the nonnegative quadratic programming problem in suppor...
Various problems in nonnegative quadratic programming arise in the training of large margin classifi...
We derive multiplicative updates for solving the nonnegative quadratic programming problem in suppor...
Nonnegativity constraints arise frequently in statistical learning and pattern recognition. Multipli...
In many applications, it makes sense to solve the least square problems with nonnegative constraints...
We consider the existence of fixed points of nonnegative neural networks, i.e., neural networks that...
At the intersection of combinatorial and nonlinear optimization, quadratic programming (QP) plays an...
We investigate a learning algorithm for the classification of nonnegative data by mixture models. Mu...
This paper considers a class of neural networks (NNs) for solving linear programming (LP) problems, ...
introduced a second-derivative sequential quadratic programming method (S2QP) for solving nonlinear ...
Abstract—Most existing neural networks for solving linear variational inequalities (LVIs) with the m...
International audienceMultiplicative update algorithms have encountered a great success to solve opt...
In this paper, we study the problem of minimizing a multilinear objective function over the discrete...
Projet PROMATHIn this paper we study the convergence of sequential quadratic programming algorithms ...
Many problems in neural computation and statistical learning involve optimizations with nonnegativit...
We derive multiplicative updates for solving the nonnegative quadratic programming problem in suppor...
Various problems in nonnegative quadratic programming arise in the training of large margin classifi...
We derive multiplicative updates for solving the nonnegative quadratic programming problem in suppor...
Nonnegativity constraints arise frequently in statistical learning and pattern recognition. Multipli...
In many applications, it makes sense to solve the least square problems with nonnegative constraints...
We consider the existence of fixed points of nonnegative neural networks, i.e., neural networks that...
At the intersection of combinatorial and nonlinear optimization, quadratic programming (QP) plays an...
We investigate a learning algorithm for the classification of nonnegative data by mixture models. Mu...
This paper considers a class of neural networks (NNs) for solving linear programming (LP) problems, ...
introduced a second-derivative sequential quadratic programming method (S2QP) for solving nonlinear ...
Abstract—Most existing neural networks for solving linear variational inequalities (LVIs) with the m...
International audienceMultiplicative update algorithms have encountered a great success to solve opt...
In this paper, we study the problem of minimizing a multilinear objective function over the discrete...
Projet PROMATHIn this paper we study the convergence of sequential quadratic programming algorithms ...