We develop search algorithms based on local search, and amatheuristic that solves a set of mixed integer programming models to improve the robustness of a set of solutions for an academic timetabling problem. The matheuristic uses the solution pool feature of CPLEX while solving two relatedMIP models iteratively. The solutions form a network (Akkan et al.in Eur J Oper Res 249(2):560–576, 2016), in which edges are defined by the Hamming distance between pairs of solutions. This network is used to calculate a robustness measure, where disruption of a solution is assumed to occur when the time slot to which a team had been assigned is no longer feasible for that team and the heuristic response to this disruption is choosing one of the neighbor...
Throughout the course of an optimization run, the probability of yielding further improvement become...
Pareto local search (PLS) is an extension of iterative improvement methods for multi-objective combi...
AbstractThis paper analyzes the performance of local search algorithms (guided by the best-to-date s...
We develop search algorithms based on local search, and amatheuristic that solves a set of mixed int...
This article describes a methodology developed to find robust solutions to a novel timetabling probl...
For many combinatorial optimization problems, it is important to identify solutions that can be repa...
For many combinatorial optimization problems, it is important to identify solutions that can be rep...
University timetabling problems (UTPs) represent a class of challenging and practical constrained op...
In this paper, we propose an extended local search frame-work to solve combinatorial optimization pr...
Solution robustness focuses on structural similarities between the nominal solution and the scenario...
The content of this thesis is divided into two parts. The first part of the thesis deals with the st...
Pareto Local Search (PLS) is a simple and effective local search method for tackling multi-objective...
Robust optimization over time (ROOT) is a relatively recent topic in the field of dynamic evolutiona...
Jin Y, Tang K, Yu X, Sendhoff B, Yao X. A framework for finding robust optimal solutions over time. ...
Pareto local search (PLS) methods are local search algorithms for multi-objective combinatorial opti...
Throughout the course of an optimization run, the probability of yielding further improvement become...
Pareto local search (PLS) is an extension of iterative improvement methods for multi-objective combi...
AbstractThis paper analyzes the performance of local search algorithms (guided by the best-to-date s...
We develop search algorithms based on local search, and amatheuristic that solves a set of mixed int...
This article describes a methodology developed to find robust solutions to a novel timetabling probl...
For many combinatorial optimization problems, it is important to identify solutions that can be repa...
For many combinatorial optimization problems, it is important to identify solutions that can be rep...
University timetabling problems (UTPs) represent a class of challenging and practical constrained op...
In this paper, we propose an extended local search frame-work to solve combinatorial optimization pr...
Solution robustness focuses on structural similarities between the nominal solution and the scenario...
The content of this thesis is divided into two parts. The first part of the thesis deals with the st...
Pareto Local Search (PLS) is a simple and effective local search method for tackling multi-objective...
Robust optimization over time (ROOT) is a relatively recent topic in the field of dynamic evolutiona...
Jin Y, Tang K, Yu X, Sendhoff B, Yao X. A framework for finding robust optimal solutions over time. ...
Pareto local search (PLS) methods are local search algorithms for multi-objective combinatorial opti...
Throughout the course of an optimization run, the probability of yielding further improvement become...
Pareto local search (PLS) is an extension of iterative improvement methods for multi-objective combi...
AbstractThis paper analyzes the performance of local search algorithms (guided by the best-to-date s...