Convex optimization is a branch of mathematics dealing with non-linear optimization problems with additional geometric structure. This area has been the focus of considerable recent research due to the fact that convex optimization problems are scalable and can be efficiently solved by interior-point methods. Over the last ten years or so, convex optimization has found new applications in many areas including control theory, signal processing, communications and networks, circuit design, data analysis and finance.Of key importance in convex optimization is the notion of duality, and in particular that of Fenchel duality. This work explores algorithms for calculating symbolic Fenchel conjugates of a class of real-valued functions defined on ...
In this paper, we present a generalization of Fenchel's conjugation and derive infimal convolution f...
Problems of minimizing a convex function or maximizing a concave function over a convex set are call...
Problems of minimizing a convex function or maximizing a concave function over a convex set are call...
Convex optimization is a branch of mathematics dealing with non-linear optimization problems with ad...
Of key importance in convex analysis and optimization is the notion of duality, and in particular th...
Via perturbational approach, we give an alternative dual problem for a general infinite dimensional ...
S for arbitrary set, K for convex cone, I g(·) is for arbitrary functions, not necessarily convex, I...
In this work, we obtain a Fenchel–Lagrange dual problem for an infinite dimensional optimization pri...
The main contribution of this thesis is the concept of Fenchel duality with a focus on its applicati...
The main contribution of this thesis is the concept of Fenchel duality with a focus on its applicati...
With this thesis we bring some new results and improve some existing ones in conjugate duality and s...
With this thesis we bring some new results and improve some existing ones in conjugate duality and s...
Algorithms for the proportional rounding of a nonnegative vector, and for the biproportional roundin...
We consider the DC optimization problem (P)infx∈X( f1(x)- f2(x))+( g1(Ax)- g2(Ax)), where f1, f2, g1...
Algorithms for the proportional rounding of a nonnegative vector, and for the biproportional roundin...
In this paper, we present a generalization of Fenchel's conjugation and derive infimal convolution f...
Problems of minimizing a convex function or maximizing a concave function over a convex set are call...
Problems of minimizing a convex function or maximizing a concave function over a convex set are call...
Convex optimization is a branch of mathematics dealing with non-linear optimization problems with ad...
Of key importance in convex analysis and optimization is the notion of duality, and in particular th...
Via perturbational approach, we give an alternative dual problem for a general infinite dimensional ...
S for arbitrary set, K for convex cone, I g(·) is for arbitrary functions, not necessarily convex, I...
In this work, we obtain a Fenchel–Lagrange dual problem for an infinite dimensional optimization pri...
The main contribution of this thesis is the concept of Fenchel duality with a focus on its applicati...
The main contribution of this thesis is the concept of Fenchel duality with a focus on its applicati...
With this thesis we bring some new results and improve some existing ones in conjugate duality and s...
With this thesis we bring some new results and improve some existing ones in conjugate duality and s...
Algorithms for the proportional rounding of a nonnegative vector, and for the biproportional roundin...
We consider the DC optimization problem (P)infx∈X( f1(x)- f2(x))+( g1(Ax)- g2(Ax)), where f1, f2, g1...
Algorithms for the proportional rounding of a nonnegative vector, and for the biproportional roundin...
In this paper, we present a generalization of Fenchel's conjugation and derive infimal convolution f...
Problems of minimizing a convex function or maximizing a concave function over a convex set are call...
Problems of minimizing a convex function or maximizing a concave function over a convex set are call...