Given a matrix of weights, the linear ordering problem (LOP) consists of finding a permutation of the columns and rows in order to maximize the sum of the weights in the upper triangle. This NP-complete problem can also be formulated in terms of graphs, as finding an acyclic tournament with a maximal sum of arc weights in a complete weighted graph. In this paper,wefirst review the previousmethods for theLOPand then propose a heuristic algorithm based on the variable neighborhood search (VNS) methodology. The method combines different neighborhoods for an efficient exploration of the search space. We explore different search strategies and propose a hybrid method in which the VNS is coupled with a short-term tabu search for improved outcomes...
The linear ordering problem (LOP) has a wide range of applications in several fields, such as schedu...
AbstractMaximum clique is one of the most studied NP-hard optimization problem on graphs because of ...
International audienceGraphical models factorize a global probability distribution/energy function a...
Given a matrix of weights, the Linear Ordering Problem (LOP) consists of finding a permutation of th...
Given a matrix of weights, the Linear Ordering Problem (LOP) consists of finding a permutation of th...
The linear ordering problem (LOP) is an NP-hard problem in combinatorial optimization. The problem h...
In this work, the Linear Ordering Problem (LOP) is approached. This is an NP-hard problem which has ...
International audienceIn this article we investigate a new variant of Variable Neighborhood Search (...
ABSTRACT:- In this paper we describe and implement an algorithm for the exact solution of the Linear...
Mixed integer programming provides a unifying framework for solving a medley of hard combinatorial o...
In this paper we describe and implement an algorithm for the exact solution of the Linear Ordering p...
For many NP-hard combinatorial optimization problems, the existence of constraints complicates the i...
AbstractThe linear ordering problem consists in finding a linear order at minimum remoteness from a ...
The recent Variable Neighborhood Search (VNS) metaheuristic combines local search with systematic ch...
Abstract. Large neighborhood search (LNS) [25] is a framework that combines the expressiveness of co...
The linear ordering problem (LOP) has a wide range of applications in several fields, such as schedu...
AbstractMaximum clique is one of the most studied NP-hard optimization problem on graphs because of ...
International audienceGraphical models factorize a global probability distribution/energy function a...
Given a matrix of weights, the Linear Ordering Problem (LOP) consists of finding a permutation of th...
Given a matrix of weights, the Linear Ordering Problem (LOP) consists of finding a permutation of th...
The linear ordering problem (LOP) is an NP-hard problem in combinatorial optimization. The problem h...
In this work, the Linear Ordering Problem (LOP) is approached. This is an NP-hard problem which has ...
International audienceIn this article we investigate a new variant of Variable Neighborhood Search (...
ABSTRACT:- In this paper we describe and implement an algorithm for the exact solution of the Linear...
Mixed integer programming provides a unifying framework for solving a medley of hard combinatorial o...
In this paper we describe and implement an algorithm for the exact solution of the Linear Ordering p...
For many NP-hard combinatorial optimization problems, the existence of constraints complicates the i...
AbstractThe linear ordering problem consists in finding a linear order at minimum remoteness from a ...
The recent Variable Neighborhood Search (VNS) metaheuristic combines local search with systematic ch...
Abstract. Large neighborhood search (LNS) [25] is a framework that combines the expressiveness of co...
The linear ordering problem (LOP) has a wide range of applications in several fields, such as schedu...
AbstractMaximum clique is one of the most studied NP-hard optimization problem on graphs because of ...
International audienceGraphical models factorize a global probability distribution/energy function a...