A new simple MIP heuristic, called Randomized Neighborhood Search (RANS) is proposed, whose purpose is to produce within short time bounds high quality solutions especially for large size MIP problems as the ones characterizing real industrial applications. Starting from starts from a feasible incumbent solution RANS iterates solutions' neighborhood exploration randomly defined by calling a MIP solver as a black box tool. RANS rationale is similar to the one of other MIP heuristics recently appeared in literature but, differently, it exploits only a randomization mechanism to guide the MIP solver. RANS has some self-tuning rules so that it needs as single input parameter the maximum computation time. RANS also includes a procedure for gener...
There has already been a lot of research on Local Search Heuristics in Computer Science. Local Searc...
This thesis investigates the effect of neighborhood structure on simulated annealing, a random searc...
Abstract. This paper proposes an adaptation of the RINS MIP heuris-tic which explicitly explores pre...
In the recent years, a couple of quite successful large neighborhood search improvement heuristics f...
Mixed integer programming provides a unifying framework for solving a medley of hard combinatorial o...
In recent years many so-called matheuristics have been proposed for solving Mixed Integer Program...
The definition of a suitable neighborhood structure on the solution space is a key step when designi...
Large Neighborhood Search (LNS) is a combinatorial optimization heuristic that starts with an assign...
Summarization: The Probabilistic Traveling Salesman Problem is a variation of the classic traveling ...
A new approach is presented to the traveling salesman problem (TSP) relying on a novel greedy repres...
Many discrete optimization problems of practical interest cannot be solved to optimality in the avai...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Sloan School of Management, Operations Resea...
International audienceTo solve problems with Local Search procedures, neighborhoods have to be defin...
Summarization: In this paper, a new modified version of Greedy Randomized Adaptive Search Procedure ...
Local search is a popular technique to solve combinatorial optimization problems efficiently. To esc...
There has already been a lot of research on Local Search Heuristics in Computer Science. Local Searc...
This thesis investigates the effect of neighborhood structure on simulated annealing, a random searc...
Abstract. This paper proposes an adaptation of the RINS MIP heuris-tic which explicitly explores pre...
In the recent years, a couple of quite successful large neighborhood search improvement heuristics f...
Mixed integer programming provides a unifying framework for solving a medley of hard combinatorial o...
In recent years many so-called matheuristics have been proposed for solving Mixed Integer Program...
The definition of a suitable neighborhood structure on the solution space is a key step when designi...
Large Neighborhood Search (LNS) is a combinatorial optimization heuristic that starts with an assign...
Summarization: The Probabilistic Traveling Salesman Problem is a variation of the classic traveling ...
A new approach is presented to the traveling salesman problem (TSP) relying on a novel greedy repres...
Many discrete optimization problems of practical interest cannot be solved to optimality in the avai...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Sloan School of Management, Operations Resea...
International audienceTo solve problems with Local Search procedures, neighborhoods have to be defin...
Summarization: In this paper, a new modified version of Greedy Randomized Adaptive Search Procedure ...
Local search is a popular technique to solve combinatorial optimization problems efficiently. To esc...
There has already been a lot of research on Local Search Heuristics in Computer Science. Local Searc...
This thesis investigates the effect of neighborhood structure on simulated annealing, a random searc...
Abstract. This paper proposes an adaptation of the RINS MIP heuris-tic which explicitly explores pre...