In this paper, we propose a novel optimization algorithm for examination timetabling. It works by alternating two phases; one based on a stochastic local search and the other on a deterministic local search. The stochastic phase is fundamentally based on biased random sampling that iteratively constructs schedules according to a matrix whose entries are the probability with which exams can be assigned to time slots. The deterministic phase, instead, consists of assigning (according to a given ordering) each exam sequentially to the time slot that causes the lowest increase in the. schedule penalty. After a schedule is constructed, swap operations are executed to improve performance. These two phases are coupled and made closely interactive ...
In higher education institutions, particularly universities, the task of scheduling examinations is ...
This dissertation is concerned with configuring stochastic local search for combinatorial optimizati...
In recent times, there has been a growing attention to intelligent optimization algorithms centred o...
Examination timetabling assigns examinations to a given number of time slots so that there are no co...
Examination timetabling assigns examinations to a given number of time slots so that there are no co...
This thesis addressed the Examination Timetabling Problem, in particular the Toronto and Internation...
In this paper we introduce a new optimization method for the examinations scheduling problem. Rather...
We investigate the examination timetabling problem in the context of Italian universities. The outco...
The examination timetabling problem involves assigning exams to a specific or limited number of time...
Examination timetabling is a well-studied combinatorial optimization problem. We present a new hybri...
Since the 1960s, automated approaches to examination timetabling have been explored and a wide varie...
We propose a Simulated Annealing approach for the Examination Timetabling problem, in the classical ...
This paper presents a hyper-heuristic approach which hybridises low-level heuristic moves to improve...
The timetabling problem involves the scheduling of a set of entities (e.g., lectures, exams, vehicle...
We propose a simulated annealing approach for the examination timetabling problem, as formulated in ...
In higher education institutions, particularly universities, the task of scheduling examinations is ...
This dissertation is concerned with configuring stochastic local search for combinatorial optimizati...
In recent times, there has been a growing attention to intelligent optimization algorithms centred o...
Examination timetabling assigns examinations to a given number of time slots so that there are no co...
Examination timetabling assigns examinations to a given number of time slots so that there are no co...
This thesis addressed the Examination Timetabling Problem, in particular the Toronto and Internation...
In this paper we introduce a new optimization method for the examinations scheduling problem. Rather...
We investigate the examination timetabling problem in the context of Italian universities. The outco...
The examination timetabling problem involves assigning exams to a specific or limited number of time...
Examination timetabling is a well-studied combinatorial optimization problem. We present a new hybri...
Since the 1960s, automated approaches to examination timetabling have been explored and a wide varie...
We propose a Simulated Annealing approach for the Examination Timetabling problem, in the classical ...
This paper presents a hyper-heuristic approach which hybridises low-level heuristic moves to improve...
The timetabling problem involves the scheduling of a set of entities (e.g., lectures, exams, vehicle...
We propose a simulated annealing approach for the examination timetabling problem, as formulated in ...
In higher education institutions, particularly universities, the task of scheduling examinations is ...
This dissertation is concerned with configuring stochastic local search for combinatorial optimizati...
In recent times, there has been a growing attention to intelligent optimization algorithms centred o...