Given a non empty polyhedral set, we consider the problem of finding a vector belonging to it and having the minimum number of nonzero components, i.e., a feasible vector with minimum zero-norm. This combinatorial optimization problem is NP-Hard and arises in various fields such as machine learning, pattern recognition, signal processing. One of the contributions of this paper is to propose two new smooth approximations of the zero-norm function, where the approximating functions are separable and concave. In this paper we first formally prove the equivalence between the approximating problems and the original nonsmooth problem. To this aim, we preliminarily state in a general setting theoretical conditions sufficient to guarantee the equiv...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Sloan School of Management, Operations Resea...
In this paper, we develop a kind of branch-and-bound algorithm for solving con-cave minimization pro...
We consider the problem of minimizing the sum of a series of univariate (possibly non-convex) functi...
Motivated by the successful application of mathematical programming techniques to difficult machine ...
We consider the problem of minimizing a class of quasi-concave functions over a convex set. Quasi-co...
The paper is concerned with multiobjective sparse optimization problems, i.e. the problem of simulta...
AbstractThis article presents a new algorithm for solving the problem of globally minimizing a conca...
Finite termination, at point satisfying the minimum principle necessary optimality condition, is est...
A sufficient optimality criterion for linearly-constrained concave minimization problems is given in...
Abstract. In this paper, we develop two algorithms for globally optimizing a special class of linear...
We consider minimizing a class of low rank quasi-concave functions over a convex set and give a full...
A decomposition approach is proposed for minimizing bi(quasi)concave functions over polytopes. Impor...
AbstractThis paper proposes an algebra approach for solving the linearly constrained continuous quas...
We present a fully polynomial time approximation scheme (FPTAS) for optimizing a very general class ...
Problems of the piece-linear concave programming and problems about the poluhedron set embedding are...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Sloan School of Management, Operations Resea...
In this paper, we develop a kind of branch-and-bound algorithm for solving con-cave minimization pro...
We consider the problem of minimizing the sum of a series of univariate (possibly non-convex) functi...
Motivated by the successful application of mathematical programming techniques to difficult machine ...
We consider the problem of minimizing a class of quasi-concave functions over a convex set. Quasi-co...
The paper is concerned with multiobjective sparse optimization problems, i.e. the problem of simulta...
AbstractThis article presents a new algorithm for solving the problem of globally minimizing a conca...
Finite termination, at point satisfying the minimum principle necessary optimality condition, is est...
A sufficient optimality criterion for linearly-constrained concave minimization problems is given in...
Abstract. In this paper, we develop two algorithms for globally optimizing a special class of linear...
We consider minimizing a class of low rank quasi-concave functions over a convex set and give a full...
A decomposition approach is proposed for minimizing bi(quasi)concave functions over polytopes. Impor...
AbstractThis paper proposes an algebra approach for solving the linearly constrained continuous quas...
We present a fully polynomial time approximation scheme (FPTAS) for optimizing a very general class ...
Problems of the piece-linear concave programming and problems about the poluhedron set embedding are...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Sloan School of Management, Operations Resea...
In this paper, we develop a kind of branch-and-bound algorithm for solving con-cave minimization pro...
We consider the problem of minimizing the sum of a series of univariate (possibly non-convex) functi...