In the literature, methods for the construction of piecewise linear upper and lower bounds for the approximation of univariate convex functions have been proposed. We study the effect of the use of transformations on the approximation of univariate (convex) functions. In this paper, we show that these transformations can be used to construct upper and lower bounds for nonconvex functions. Moreover, we show that by using such transformations of the input variable or the output variable, we obtain tighter upper and lower bounds for the approximation of convex functions than without these approximations. We show that these transformations can be applied to the approximation of a (convex) Pareto curve that is associated with a (convex) bi-objec...
The equivalent formulation of a convex optimization problem is the computation of a value of a conju...
We consider the problem of constructing an approximation of the Pareto curve associated with the mul...
The problem of finding a continuous piecewise linear function approximating a regression function is...
In the literature, methods for the construction of piecewise linear upper and lower bounds for the a...
In this paper, piecewise-linear upper and lower bounds for univariate convex functions are derived t...
In this paper, piecewise linear upper and lower bounds for univariate convex functions are derived t...
AbstractWe are given univariate data that include random errors. We consider the problem of calculat...
In many fields, we come across problems where we want to optimize several conflicting objectives sim...
We study the expressibility and learnability of solution functions of convex optimization and their ...
In this paper we prove the counterintuitive result that the quadratic least squares approximation of...
We consider a Benson type algorithm to ‘solve’ convex multiobjective optimization problems in the se...
We consider the problem of constructing an approximation of the Pareto curve associated with the mul...
The main contents of this paper is two-fold.First, we present a method to approximate multivariate c...
International audienceFor dealing with sparse models, a large number of continuous approximations of...
AbstractIn this paper an efficient method is presented for solving the problem of approximation of c...
The equivalent formulation of a convex optimization problem is the computation of a value of a conju...
We consider the problem of constructing an approximation of the Pareto curve associated with the mul...
The problem of finding a continuous piecewise linear function approximating a regression function is...
In the literature, methods for the construction of piecewise linear upper and lower bounds for the a...
In this paper, piecewise-linear upper and lower bounds for univariate convex functions are derived t...
In this paper, piecewise linear upper and lower bounds for univariate convex functions are derived t...
AbstractWe are given univariate data that include random errors. We consider the problem of calculat...
In many fields, we come across problems where we want to optimize several conflicting objectives sim...
We study the expressibility and learnability of solution functions of convex optimization and their ...
In this paper we prove the counterintuitive result that the quadratic least squares approximation of...
We consider a Benson type algorithm to ‘solve’ convex multiobjective optimization problems in the se...
We consider the problem of constructing an approximation of the Pareto curve associated with the mul...
The main contents of this paper is two-fold.First, we present a method to approximate multivariate c...
International audienceFor dealing with sparse models, a large number of continuous approximations of...
AbstractIn this paper an efficient method is presented for solving the problem of approximation of c...
The equivalent formulation of a convex optimization problem is the computation of a value of a conju...
We consider the problem of constructing an approximation of the Pareto curve associated with the mul...
The problem of finding a continuous piecewise linear function approximating a regression function is...