search query: @indexterm NEURAL NETWoRKS / total: 121
reference: 13 / 121
Author: | Carrasco, M.P. Pato, M.V. |
Title: | A comparison of discrete and continuous neural network approaches to solve the class/teacher timetabling problem |
Journal: | European Journal of Operational Research
2004 : FEB, VOL. 153:1, p. 65-79 |
Index terms: | Timetabling Scheduling Neural networks Educational institutions |
Language: | eng |
Abstract: | This study explores the application of neural network-based heuristics to the class/teacher timetabling problem (CTTP). In this paper the authors consider the scheduling of a set of lessons (class/teacher assignments) subject to hard and soft constraints, and can be modelled in the context of combinatorial optimization. The authors present an experimental comparison of two neural network-based heuristics to tackle the problem. Experimental results on both real-life and randomly-generated instances show the advantages of these ingredients. |
SCIMA