DocumentCode :
1049287
Title :
A Novel Constructive-Optimizer Neural Network for the Traveling Salesman Problem
Author :
Saadatmand-Tarzjan, Mahdi ; Khademi, Morteza ; Akbarzadeh-T, Mohammad-R ; Moghaddam, Hamid Abrishami
Author_Institution :
Tarbiat Modares Univ., Tehran
Volume :
37
Issue :
4
fYear :
2007
Firstpage :
754
Lastpage :
770
Abstract :
In this paper, a novel constructive-optimizer neural network (CONN) is proposed for the traveling salesman problem (TSP). CONN uses a feedback structure similar to Hopfield-type neural networks and a competitive training algorithm similar to the Kohonen-type self-organizing maps (K-SOMs). Consequently, CONN is composed of a constructive part, which grows the tour and an optimizer part to optimize it. In the training algorithm, an initial tour is created first and introduced to CONN. Then, it is trained in the constructive phase for adding a number of cities to the tour. Next, the training algorithm switches to the optimizer phase for optimizing the current tour by displacing the tour cities. After convergence in this phase, the training algorithm switches to the constructive phase anew and is continued until all cities are added to the tour. Furthermore, we investigate a relationship between the number of TSP cities and the number of cities to be added in each constructive phase. CONN was tested on nine sets of benchmark TSPs from TSPLIB to demonstrate its performance and efficiency. It performed better than several typical neural networks (NNs), including KNIES_TSP_Local, KNIES_TSP_Global, Budinich´s SOM, Co-adaptive net, and multivalued Hopfield network as wall as computationally comparable variants of the simulated annealing algorithm, in terms of both CPU time and accuracy. Furthermore, CONN converged considerably faster than expanding SOM and evolved integrated SOM and generated shorter tours compared to KNIES_DECOMPOSE. Although CONN is not yet comparable in terms of accuracy with some sophisticated computationally intensive algorithms, it converges significantly faster than they do. Generally speaking, CONN provides the best compromise between CPU time and accuracy among currently reported NNs for TSP.
Keywords :
competitive algorithms; neural nets; travelling salesman problems; Hopfield-type neural network; Kohonen-type self-organizing maps; TSP cities; competitive training algorithm; constructive-optimizer neural network; traveling salesman problem; Benchmark testing; Cities and towns; Computer networks; Convergence; Hopfield neural networks; Neural networks; Neurofeedback; Self organizing feature maps; Switches; Traveling salesman problems; Constructive-optimizer neural network (CONN); Hopfield-type neural networks (HNNs); Kohonen-type self-organizing maps (K-SOMs); traveling salesman problem (TSP); Algorithms; Computer Simulation; Decision Support Techniques; Models, Theoretical; Neural Networks (Computer); Problem Solving;
fLanguage :
English
Journal_Title :
Systems, Man, and Cybernetics, Part B: Cybernetics, IEEE Transactions on
Publisher :
ieee
ISSN :
1083-4419
Type :
jour
DOI :
10.1109/TSMCB.2006.888421
Filename :
4267878
Link To Document :
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