Multiobjective mixed integer convex optimization refers to mathematical programming problems where more than one convex objective function needs to be optimized simultaneously and some of the variables are constrained to take integer values. We present a branch-and-bound method based on the use of properly defined lower bounds. We do not simply rely on convex relaxations, but we built linear outer approximations of the image set in an adaptive way. We are able to guarantee correctness in terms of detecting both the efficient and the nondominated set of multiobjective mixed integer convex problems according to a prescribed precision. As far as we know, the procedure we present is the first deterministic algorithm devised to handle this class...
We present an algorithm for Mixed-Integer Nonlinear Programming (MINLP) problems in which the non-co...
Multiobjective optimization problems commonly arise in different fields like economics or engineerin...
The topic of this dissertation is the design of fast branch-and-bound algorithms that use intelligen...
Multiobjective mixed integer convex optimization refers to mathematical programming problems where m...
We study convex multi-objective Mixed Integer Non-Linear Programming problems (MINLPs), which are ch...
We present a branch-and-bound algorithm for minimizing multiple convex quadratic objective function...
english version and extended version of the ROADEF talk (hal-00464834)Many concrete and important pr...
In this paper, we address the problem of minimizing a convex function f over a convex set, with the ...
Technical Report #1664, Computer Sciences Department, University of Wisconsin-Madison, 2009.This pap...
During the last decades, research in multi-objective optimisation has seen considerable growth. Howe...
Thesis: Ph. D., Massachusetts Institute of Technology, Sloan School of Management, Operations Resear...
AbstractThis paper is motivated by the fact that mixed integer nonlinear programming is an important...
In multi objective optimization problems several objective functions have to be minimized simultaneo...
Many optimization problems involve integer and continuous variables that can be modeled as mixed int...
Conic quadratic functions arise often when modeling uncertainty and risk-aversion, and are used in m...
We present an algorithm for Mixed-Integer Nonlinear Programming (MINLP) problems in which the non-co...
Multiobjective optimization problems commonly arise in different fields like economics or engineerin...
The topic of this dissertation is the design of fast branch-and-bound algorithms that use intelligen...
Multiobjective mixed integer convex optimization refers to mathematical programming problems where m...
We study convex multi-objective Mixed Integer Non-Linear Programming problems (MINLPs), which are ch...
We present a branch-and-bound algorithm for minimizing multiple convex quadratic objective function...
english version and extended version of the ROADEF talk (hal-00464834)Many concrete and important pr...
In this paper, we address the problem of minimizing a convex function f over a convex set, with the ...
Technical Report #1664, Computer Sciences Department, University of Wisconsin-Madison, 2009.This pap...
During the last decades, research in multi-objective optimisation has seen considerable growth. Howe...
Thesis: Ph. D., Massachusetts Institute of Technology, Sloan School of Management, Operations Resear...
AbstractThis paper is motivated by the fact that mixed integer nonlinear programming is an important...
In multi objective optimization problems several objective functions have to be minimized simultaneo...
Many optimization problems involve integer and continuous variables that can be modeled as mixed int...
Conic quadratic functions arise often when modeling uncertainty and risk-aversion, and are used in m...
We present an algorithm for Mixed-Integer Nonlinear Programming (MINLP) problems in which the non-co...
Multiobjective optimization problems commonly arise in different fields like economics or engineerin...
The topic of this dissertation is the design of fast branch-and-bound algorithms that use intelligen...