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A New Activation Function in the Hopfield Network for Solving Optimization Problems

机译:Hopfield网络中用于优化问题的新激活函数

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This paper shows that the performance of the Hopfield network for solving optimizaion problems can be improved by using a new activation (output) function. The effects of the activation function on the performance of the Hopfield network are analyzed. It is shown that the sigmoid activation function in the Hopfield network is sensitive to noise of neurons. The reason is that the sigmoid function is most sensitive in the range where noise is most predominant. A new activation function that is more robust against noise is proposed. The new activation function has the capability of amplifying the signals between neurons while suppressing noise. The performance of the new activation function is evaluated through simulation. Compared with the sigmoid function, the new activation function reduces the error rate of tour length by 30.6precent and increases the percentage of valid tours by 38.6precent during simulation on 200 randomly generated city distributions of the 10-city traveling salesman problem.
机译:本文表明,通过使用新的激活(输出)功能,可以改善Hopfield网络解决优化问题的性能。分析了激活函数对Hopfield网络性能的影响。结果表明,Hopfield网络中的S型激活函数对神经元的噪声敏感。原因是在噪声最主要的范围内,S型函数最敏感。提出了一种对噪声更鲁棒的新激活函数。新的激活功能具有在抑制噪声的同时放大神经元之间的信号的能力。通过仿真评估了新激活功能的性能。与S型函数相比,新的激活函数在模拟10个城市旅行推销员问题的200个随机城市分布期间,将旅行长度的错误率降低了30.6%,并将有效旅行的百分比提高了38.6%。

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