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Fast simulated annealing with a multivariate Cauchy distribution and the configuration's initial temperature

机译:具有多元柯西分布和配置的初始温度的快速模拟退火

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摘要

We propose a multi-dimensional fast simulated annealing method based on a multivariate Cauchy probability distribution and an initial temperature estimated from the configuration's variation. While conventional multi-dimensional fast simulated annealing adopts the product of onedimensional random variables generated by a univariate Cauchy distribution, the proposed method generates a random vector from a multivariate Cauchy distribution. In this way, fast simulated annealing for a multi-dimensional problem maintains the same annealing schedule as that for the one-dimensional case. The proposed method also utilizes the initial temperature estimated from the configuration's variation to generate a candidate state in addition to the conventional initial temperature derived from the variation of the objective function for the acceptance probability. The proposed method is shown not only to guarantee a fast annealing schedule but also to enhance the search capability. The proposed method was tested against the optimization of real-valued functions. We empirically found that the configuration's initial temperature, together with multivariate Cauchy distribution, is more suitable than the conventional scheme for a fast annealing schedule. Moreover, the proposed method outperforms the conventional one in optimization problems having many variables.
机译:我们提出了一种基于多维柯西概率分布和根据配置变化估算的初始温度的多维快速模拟退火方法。传统的多维快速模拟退火采用单变量柯西分布生成的一维随机变量的乘积,而所提出的方法则从多维柯西分布生成随机矢量。这样,针对多维问题的快速模拟退火将保持与一维情况相同的退火进度。除了从目标函数的变化得出的接受概率的常规初始温度之外,提出的方法还利用根据配置的变化估算的初始温度来生成候选状态。提出的方法不仅可以保证快速的退火进度,而且可以提高搜索能力。针对实值函数的优化对提出的方法进行了测试。我们从经验上发现,配置的初始温度以及多元柯西分布比常规方案更适合用于快速退火程序。此外,所提出的方法在具有许多变量的优化问题上优于传统方法。

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