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An Improved Transiently Chaotic Neural Network with Multiple Chaotic Dynamics for Maximum Clique Problem

机译:一种改进的瞬态混沌神经网络,具有多种混沌动力学,以实现最大的集团问题

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摘要

By analyzing the dynamics behaviors and parameter distribution of transiently chaotic neural network, we propose an improved transiently neural network model with new embedded back-end chaotic dynamics for combinatorial optimization problem and test it on the maximum clique problem. With the new embedded back- end chaotic dynamics, our proposed model can get enough chaotic dynamics to do global and local search, which makes the network success in escaping local minima and converging completely. Moreover the proposed model has unobvious parameter dependence. The simulation on a number of instances has verified our proposed network model.
机译:通过分析瞬态混沌神经网络的动态行为和参数分布,提出了一种改进的瞬态神经网络模型,具有新的嵌入式后端混沌动力学进行组合优化问题,并在最大的集团问题上测试。随着新的嵌入式后端混沌动态,我们所提出的模型可以获得足够的混乱动态来做全球和本地搜索,这使得网络成功逃避局部最小值并完全收敛。此外,所提出的模型具有不可吸收的参数依赖性。关于许多实例的模拟已经验证了我们所提出的网络模型。

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