This thesis is devoted to algorithms for solving two optimization problems, using linear M-estimation methods, and their implementation. First, an algorithm for the non-linear M-estimation problem is considered. The main idea of the algorithm is to linearize the residual function in each iteration and thus calculate the iteration step by solving a linear M- estimation problem. A 2-norm bound on the variables restricts the step size, to guarantee convergence. The other algorithm solves the dual linear programming problem by making a ``smooth'' approximation of edges and inequality constraints using quadratic functions, thus making it possible to use Newton's method to find the optimal solution. The quadratic approximation of the inequality c...
AbstractIn this paper, we study the problem of quadratic programming with M-matrices. We describe (1...
This dissertation primarily concerns maximum likelihood (ML) estimation of linear and nonlinear para...
International audienceThis paper studies the addition of linear constraints to the Support Vector Re...
This thesis is devoted to algorithms for solving two optimization problems, using linear M-estimatio...
A linear problem of regression analysis is considered under the assumption of the presence of noise ...
AbstractThe robust linear regression problem using Huber's piecewise-quadratic M-estimator function ...
The robust linear regression problem using Huber's piecewise-quadratic M-estimator function is consi...
The study deals with bilinear minimax problems and problems of estimation in linear systems. The wor...
We have recently proposed a new approach to control the number of basis functions and the accuracy i...
This thesis presents a class of methods for solving nonlinear least squares problems. A comprehensiv...
We consider a new combinatorial optimization problem related to linear systems (MIN PFS) that consis...
Algoritms of the parametrical estimation in non-linear non-stationary regression models with the unc...
In this paper, we study the problem of quadratic programming with M-matrices. We describe (1) an ef...
The objective function and the constraints can be formulated as linear functions of independent vari...
International audienceThis paper studies the addition of linear constraints to the Support Vector Re...
AbstractIn this paper, we study the problem of quadratic programming with M-matrices. We describe (1...
This dissertation primarily concerns maximum likelihood (ML) estimation of linear and nonlinear para...
International audienceThis paper studies the addition of linear constraints to the Support Vector Re...
This thesis is devoted to algorithms for solving two optimization problems, using linear M-estimatio...
A linear problem of regression analysis is considered under the assumption of the presence of noise ...
AbstractThe robust linear regression problem using Huber's piecewise-quadratic M-estimator function ...
The robust linear regression problem using Huber's piecewise-quadratic M-estimator function is consi...
The study deals with bilinear minimax problems and problems of estimation in linear systems. The wor...
We have recently proposed a new approach to control the number of basis functions and the accuracy i...
This thesis presents a class of methods for solving nonlinear least squares problems. A comprehensiv...
We consider a new combinatorial optimization problem related to linear systems (MIN PFS) that consis...
Algoritms of the parametrical estimation in non-linear non-stationary regression models with the unc...
In this paper, we study the problem of quadratic programming with M-matrices. We describe (1) an ef...
The objective function and the constraints can be formulated as linear functions of independent vari...
International audienceThis paper studies the addition of linear constraints to the Support Vector Re...
AbstractIn this paper, we study the problem of quadratic programming with M-matrices. We describe (1...
This dissertation primarily concerns maximum likelihood (ML) estimation of linear and nonlinear para...
International audienceThis paper studies the addition of linear constraints to the Support Vector Re...