Critical analysis of hopfield's neural network model for TSP and its comparison with heuristic algorithm for shortest path computation

Farah Sarwar, A. A. Bhatti
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引用次数: 11

Abstract

For shortest path computation, Travelling-Salesman problem is NP-complete and is among the intensively studied optimization problems. Hopfield and Tank's proposed neural network based approach, for solving TSP, is discussed. Since original Hopfield's model suffers from some limitations as the number of cities increase, some modifications are discussed for better performance. With the increase in the number of cities, the best solutions provided by original Hopfield's neural network were considered to be far away from those provided by Lin and Kernighan using Heuristic algorithm. Results of both approaches are compared for different number of cities and are analyzed properly.
TSP hopfield神经网络模型的关键分析及其与启发式最短路径算法的比较
对于最短路径计算,旅行商问题是np完全的,是目前研究较多的优化问题之一。讨论了Hopfield和Tank提出的基于神经网络的TSP求解方法。由于原有Hopfield模型随着城市数量的增加会出现一定的局限性,本文讨论了对模型进行修改以获得更好的性能。随着城市数量的增加,原始Hopfield神经网络提供的最优解被认为与Lin和Kernighan使用启发式算法提供的最优解相差较大。对不同城市数量下两种方法的结果进行了比较,并进行了适当的分析。
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