To have good data quality with high complexity is often seen to be important. Intuition says that the higher accuracy and complexity the data have the better the analytic solutions becomes if it is possible to handle the increasing computing time. However, for most of the practical computational problems, high complexity data means that computational times become too long or that heuristics used to solve the problem have difficulties to reach good solutions. This is even further stressed when the size of the combinatorial problem increases. Consequently, we often need a simplified data to deal with complex combinatorial problems. In this study we stress the question of how the complexity and accuracy in a network affect the quality of the h...
International audienceThis paper presents and compares different algorithms on large scale p-median ...
The one median location problem with stochastic demands can be solved as a deterministic problem by ...
The development of a heuristic to solve an optimisation problem in a new domain, or a specific varia...
The p-median problem is often used to locate p service centers by minimizing their distances to a ge...
Solutions to combinatorial optimization problems frequently rely on heuristics to minimize an object...
The p-median problem is often used to locate P service facilities in a geographically distributed po...
The p-medianmodel is commonly used to find optimal locations of facilities for geographically distri...
The quality of a heuristic solution to a NP-hard combinatorial problem is hard to assess. A few stud...
The road network is a necessary component in transportation. It facilitiesspatial movements of peopl...
The properties found in complex networks (e.g., small-world, scale-free) have been used to character...
In solving location models, the effort expended and the quality of the solutions obtained often vari...
Solutions to combinatorial optimization problems, such as problems of locating facilities, frequentl...
This dataset is an optimality benchmark for 1 synthetic 3 real-world application scenarios:1. A synt...
The recently presented idea to learn heuristics for combinatorial optimization problems is promising...
Combinatorial optimization problems, are one of the most important types of problems in operational ...
International audienceThis paper presents and compares different algorithms on large scale p-median ...
The one median location problem with stochastic demands can be solved as a deterministic problem by ...
The development of a heuristic to solve an optimisation problem in a new domain, or a specific varia...
The p-median problem is often used to locate p service centers by minimizing their distances to a ge...
Solutions to combinatorial optimization problems frequently rely on heuristics to minimize an object...
The p-median problem is often used to locate P service facilities in a geographically distributed po...
The p-medianmodel is commonly used to find optimal locations of facilities for geographically distri...
The quality of a heuristic solution to a NP-hard combinatorial problem is hard to assess. A few stud...
The road network is a necessary component in transportation. It facilitiesspatial movements of peopl...
The properties found in complex networks (e.g., small-world, scale-free) have been used to character...
In solving location models, the effort expended and the quality of the solutions obtained often vari...
Solutions to combinatorial optimization problems, such as problems of locating facilities, frequentl...
This dataset is an optimality benchmark for 1 synthetic 3 real-world application scenarios:1. A synt...
The recently presented idea to learn heuristics for combinatorial optimization problems is promising...
Combinatorial optimization problems, are one of the most important types of problems in operational ...
International audienceThis paper presents and compares different algorithms on large scale p-median ...
The one median location problem with stochastic demands can be solved as a deterministic problem by ...
The development of a heuristic to solve an optimisation problem in a new domain, or a specific varia...