We consider a multi-neighborhood local search algorithm with a large number of possible neighborhoods. Each neighborhood is accompanied by a weight value which represents the probability of being chosen at each iteration. These weights are fixed before the algorithm runs, and are considered as parameters of the algorithm. Given a set of instances, off-line tuning of the algorithm's parameters can be done by automated algorithm configuration tools (e.g., SMAC). However, the large number of neighborhoods can make the tuning expensive and difficult even when the number of parameters has been reduced by some intuition. In this work, we propose a systematic method to characterize each neighborhood's behaviours, representing them as a feature vec...
A recent trend in local search concerns the exploitation of several different neighborhoods so as to...
This paper introduces the multi-mode set covering problem, which consists of a plurality of set cove...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Sloan School of Management, Operations Resea...
We consider a multi-neighborhood local search algorithm with a large number of possible neighborhood...
© Springer International Publishing Switzerland 2016. Methods based on Stochastic Local Search (SLS)...
Methods for automatic algorithm configuration integrate some search mechanism for generating candida...
In this paper we present and investigate partial neighborhood local searches, which only explore a s...
This thesis investigates the effect of neighborhood structure on simulated annealing, a random searc...
The performance of local search algorithms is influenced by the properties that the neighborhood imp...
AbstractMany optimization problems of practical interest are computationally intractable. Therefore,...
Many discrete optimization problems of practical interest cannot be solved to optimality in the avai...
none3siVery Large-Scale Neighborhood Search is not an algorithm or a class of algorithms, but rather...
In this paper, we present an in-depth analysis of neighborhood relations for local search algorithms...
Stochastic Local Search algorithms (SLS) are a class of methods used to tacklehard combinatorial opt...
. The increasing availability of finely-grained parallel architectures has resulted in a variety of ...
A recent trend in local search concerns the exploitation of several different neighborhoods so as to...
This paper introduces the multi-mode set covering problem, which consists of a plurality of set cove...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Sloan School of Management, Operations Resea...
We consider a multi-neighborhood local search algorithm with a large number of possible neighborhood...
© Springer International Publishing Switzerland 2016. Methods based on Stochastic Local Search (SLS)...
Methods for automatic algorithm configuration integrate some search mechanism for generating candida...
In this paper we present and investigate partial neighborhood local searches, which only explore a s...
This thesis investigates the effect of neighborhood structure on simulated annealing, a random searc...
The performance of local search algorithms is influenced by the properties that the neighborhood imp...
AbstractMany optimization problems of practical interest are computationally intractable. Therefore,...
Many discrete optimization problems of practical interest cannot be solved to optimality in the avai...
none3siVery Large-Scale Neighborhood Search is not an algorithm or a class of algorithms, but rather...
In this paper, we present an in-depth analysis of neighborhood relations for local search algorithms...
Stochastic Local Search algorithms (SLS) are a class of methods used to tacklehard combinatorial opt...
. The increasing availability of finely-grained parallel architectures has resulted in a variety of ...
A recent trend in local search concerns the exploitation of several different neighborhoods so as to...
This paper introduces the multi-mode set covering problem, which consists of a plurality of set cove...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Sloan School of Management, Operations Resea...