The main contents of this paper is two-fold.First, we present a method to approximate multivariate convex functions by piecewise linear upper and lower bounds.We consider a method that is based on function evaluations only.However, to use this method, the data have to be convex.Unfortunately, even if the underlying function is convex, this is not always the case due to (numerical) errors.Therefore, secondly, we present a multivariate data-smoothing method that smooths nonconvex data.We consider both the case that we have only function evaluations and the case that we also have derivative information.Furthermore, we show that our methods are polynomial time methods.We illustrate this methodology by applying it to some examples
AbstractWe are given univariate data that include random errors. We consider the problem of calculat...
Traditional methods of nonparametric function estimation (splines, kernels and especially wavelet fi...
After introducing concepts from convex analysis, we study how to continuously transform one convex f...
The main contents of this paper is two-fold.First, we present a method to approximate multivariate c...
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...
In this paper we prove the counterintuitive result that the quadratic least squares approximation of...
In the literature, methods for the construction of piecewise linear upper and lower bounds for the a...
In the literature, methods for the construction of piecewise linear upper and lower bounds for the a...
International audienceFor dealing with sparse models, a large number of continuous approximations of...
AbstractMethods are presented for least squares data smoothing by using the signs of divided differe...
Given noisy data, function estimation is considered when the unknown function is known a priori to c...
In this paper, we study convex optimization methods for computing the trace norm regular-ized least ...
In this thesis we investigate the use of first-order convex optimization methods applied to problems...
The problem of finding a continuous piecewise linear function approximating a regression function is...
AbstractWe are given univariate data that include random errors. We consider the problem of calculat...
Traditional methods of nonparametric function estimation (splines, kernels and especially wavelet fi...
After introducing concepts from convex analysis, we study how to continuously transform one convex f...
The main contents of this paper is two-fold.First, we present a method to approximate multivariate c...
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...
In this paper we prove the counterintuitive result that the quadratic least squares approximation of...
In the literature, methods for the construction of piecewise linear upper and lower bounds for the a...
In the literature, methods for the construction of piecewise linear upper and lower bounds for the a...
International audienceFor dealing with sparse models, a large number of continuous approximations of...
AbstractMethods are presented for least squares data smoothing by using the signs of divided differe...
Given noisy data, function estimation is considered when the unknown function is known a priori to c...
In this paper, we study convex optimization methods for computing the trace norm regular-ized least ...
In this thesis we investigate the use of first-order convex optimization methods applied to problems...
The problem of finding a continuous piecewise linear function approximating a regression function is...
AbstractWe are given univariate data that include random errors. We consider the problem of calculat...
Traditional methods of nonparametric function estimation (splines, kernels and especially wavelet fi...
After introducing concepts from convex analysis, we study how to continuously transform one convex f...