A Gradient Ascent Learning Algorithm for Elastic Nets
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概要
- 論文の詳細を見る
This paper proposes a gradient ascent learning algorithm for the elastic net approach to the Traveling Salesman Problem (TSP). The learning model has two phases : an elastic net phase, and a gradient ascent phase. The elastic net phase is equivalent to gradient descent of an energy function, and leads to a local minimum of energy that represents a good solution to the problem. Once the elastic net gets stuck in local minima, the gradient ascent phase attempts to fill up the valley by modifying parameters in a gradient ascent direction of the energy function. Thus, these two phases are iterated until the elastic net gets out of local minima. We test the algorithm on many randomly generated travel salesman problems up to 100 cities. For all problems, the systems are shown to be capable of escaping from the clastic net local minima and generating shorter tour than the original elastic net.
- 社団法人電子情報通信学会の論文
- 2003-04-01
著者
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TANG Zheng
Faculty of Engineering, Toyama University
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Cao Qi
Tateyama Systems Institute
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Tang Zheng
Faculty Of Engineering Miyazaki University
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Wang Jia
The Faculty Of Engineering Toyoma University
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WANG Jia
Faculty of Engineering, Toyama University
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