AbstractThis paper studies recent modifications of the limited memory BFGS (L-BFGS) method for solving large scale unconstrained optimization problems. Each modification technique attempts to improve the quality of the L-BFGS Hessian by employing (extra) updates in a certain sense. Because at some iterations these updates might be redundant or worsen the quality of this Hessian, this paper proposes an updates criterion to measure this quality. Hence, extra updates are employed only to improve the poor approximation of the L-BFGS Hessian. The presented numerical results illustrate the usefulness of this criterion and show that extra updates improve the performance of the L-BFGS method substantially
summary:To improve the performance of the L-BFGS method for large scale unconstrained optimization, ...
summary:To improve the performance of the L-BFGS method for large scale unconstrained optimization, ...
summary:To improve the performance of the L-BFGS method for large scale unconstrained optimization, ...
AbstractThis paper studies recent modifications of the limited memory BFGS (L-BFGS) method for solvi...
This paper studies recent modications of the limited memory BFGS (L-BFGS) method for solving large s...
In this paper we present two new numerical methods for unconstrained large-scale optimization. These...
In this paper we present two new numerical methods for unconstrained large-scale optimization. These...
In this paper we present two new numerical methods for unconstrained large-scale optimization. These...
Abstract. In this paper we present two new numerical methods for unconstrained large-scale optimizat...
AbstractThis paper attempts to combine the best features of certain extra-updating BFGS method and s...
To improve the performance of the L-BFGS method for large scale unconstrained optimization, repeatin...
We study the numerical performance of a limited memory quasi-Newton method for large scale optimizat...
summary:Simple modifications of the limited-memory BFGS method (L-BFGS) for large scale unconstraine...
summary:Simple modifications of the limited-memory BFGS method (L-BFGS) for large scale unconstraine...
We give conditions under which limited-memory quasi-Newton methods with exact line searches will ter...
summary:To improve the performance of the L-BFGS method for large scale unconstrained optimization, ...
summary:To improve the performance of the L-BFGS method for large scale unconstrained optimization, ...
summary:To improve the performance of the L-BFGS method for large scale unconstrained optimization, ...
AbstractThis paper studies recent modifications of the limited memory BFGS (L-BFGS) method for solvi...
This paper studies recent modications of the limited memory BFGS (L-BFGS) method for solving large s...
In this paper we present two new numerical methods for unconstrained large-scale optimization. These...
In this paper we present two new numerical methods for unconstrained large-scale optimization. These...
In this paper we present two new numerical methods for unconstrained large-scale optimization. These...
Abstract. In this paper we present two new numerical methods for unconstrained large-scale optimizat...
AbstractThis paper attempts to combine the best features of certain extra-updating BFGS method and s...
To improve the performance of the L-BFGS method for large scale unconstrained optimization, repeatin...
We study the numerical performance of a limited memory quasi-Newton method for large scale optimizat...
summary:Simple modifications of the limited-memory BFGS method (L-BFGS) for large scale unconstraine...
summary:Simple modifications of the limited-memory BFGS method (L-BFGS) for large scale unconstraine...
We give conditions under which limited-memory quasi-Newton methods with exact line searches will ter...
summary:To improve the performance of the L-BFGS method for large scale unconstrained optimization, ...
summary:To improve the performance of the L-BFGS method for large scale unconstrained optimization, ...
summary:To improve the performance of the L-BFGS method for large scale unconstrained optimization, ...