It is known that there are feasible algorithms for minimizing convex functions, and that for general functions, global minimization is a difficult (NP-hard) problem. It is reasonable to ask whether there exists a class of functions that is larger than the class of all convex functions for which we can still solve the corresponding minimization problems feasibly. In this paper, we prove, in essence, that no such more general class exists. In other words, we prove that global optimization is always feasible only for convex objective functions
In this paper we discuss domain reduction strategies for global optimization problems with a nonconv...
In this paper we discuss domain reduction strategies for global optimization problems with a nonconv...
In this paper we discuss domain reduction strategies for global optimization problems with a nonconv...
It is known that there are feasible algorithms for minimizing convex functions, and that for general...
In this paper we derive necessary and sufficient conditions for some problems of global minimization...
We establish new necessary and sufficient optimality conditions for global optimization problems. In...
This book presents state-of-the-art results and methodologies in modern global optimization, and has...
In this paper, we present sufficient global optimality conditions for weakly convex minimization pro...
We propose new classes of globally convexized filled functions. Unlike the globally convexized fille...
AbstractWe mainly consider global weak sharp minima for convex infinite and semi-infinite optimizati...
International audienceFor dealing with sparse models, a large number of continuous approximations of...
International audienceFor dealing with sparse models, a large number of continuous approximations of...
International audienceFor dealing with sparse models, a large number of continuous approximations of...
In this paper we discuss domain reduction strategies for global optimization problems with a nonconv...
Disclaimer: These notes have not been subjected to the usual scrutiny reserved for formal publicatio...
In this paper we discuss domain reduction strategies for global optimization problems with a nonconv...
In this paper we discuss domain reduction strategies for global optimization problems with a nonconv...
In this paper we discuss domain reduction strategies for global optimization problems with a nonconv...
It is known that there are feasible algorithms for minimizing convex functions, and that for general...
In this paper we derive necessary and sufficient conditions for some problems of global minimization...
We establish new necessary and sufficient optimality conditions for global optimization problems. In...
This book presents state-of-the-art results and methodologies in modern global optimization, and has...
In this paper, we present sufficient global optimality conditions for weakly convex minimization pro...
We propose new classes of globally convexized filled functions. Unlike the globally convexized fille...
AbstractWe mainly consider global weak sharp minima for convex infinite and semi-infinite optimizati...
International audienceFor dealing with sparse models, a large number of continuous approximations of...
International audienceFor dealing with sparse models, a large number of continuous approximations of...
International audienceFor dealing with sparse models, a large number of continuous approximations of...
In this paper we discuss domain reduction strategies for global optimization problems with a nonconv...
Disclaimer: These notes have not been subjected to the usual scrutiny reserved for formal publicatio...
In this paper we discuss domain reduction strategies for global optimization problems with a nonconv...
In this paper we discuss domain reduction strategies for global optimization problems with a nonconv...
In this paper we discuss domain reduction strategies for global optimization problems with a nonconv...