Microcanonical mean field annealing: a new algorithm for increasing the convergence speed of mean field annealing

N. Lee, A. Louri
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引用次数: 3

Abstract

The authors consider the convergence speed of mean field annealing (MFA). They combine MFA with the microcanonical simulation (MCS) method and propose an algorithm called microcanonical mean field annealing (MCMFA). In the proposed algorithm, cooling speed is controlled by current temperature so that computation in the MFA can be reduced without degradation of performance. In addition, the solution quality of MCMFA is not affected by the initial temperature. The properties of MCMFA are analyzed with a simple example and simulated with Hopfield neural networks. In order to compare MCMFA with MFA, both algorithms are applied to graph bipartitioning problems. Simulation results show that MCMFA produces a better solution than MFA.<>
微正则平均场退火:一种提高平均场退火收敛速度的新算法
考虑了平均场退火(MFA)的收敛速度。他们将MFA与微规范模拟(MCS)方法相结合,提出了一种微规范平均场退火(MCMFA)算法。在该算法中,冷却速度由当前温度控制,从而在不降低性能的情况下减少MFA的计算量。此外,MCMFA的溶液质量不受初始温度的影响。通过一个简单的例子分析了MCMFA的特性,并用Hopfield神经网络进行了仿真。为了比较MCMFA和MFA算法,将这两种算法应用于图的二分问题。仿真结果表明,MCMFA比MFA具有更好的解。
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