论文标题
基于极化共识的动力学用于优化和采样
Polarized consensus-based dynamics for optimization and sampling
论文作者
论文摘要
在本文中,我们提出了基于两极分化的共识动力学,以使基于共识的优化(CBO)和采样(CBS)分别适用于具有多种全局最小值或具有多种模式的分布的目标函数。为此,我们````极化''具有本地化内核的动力学,并且可以将结果模型视为在存在共同目标的情况下舆论形成的有限置信度模型。与其像原始共识的方法那样被共同的加权平均值所吸引,从原始共识的方法中,它可以防止检测多个以上的最小值或模式,而是在我们的方法中,每个粒子都会被加权平均值吸引,从而使附近粒子的权重更大。我们证明,在平均场状态下,极化CBS动力学对于高斯目标没有偏见。我们还证明,在零温度限制中,并且为了足够良好的表现强烈凸出目标,fokker-planck方程在Wasserstein-2距离中收敛到最小化器处的DIRAC度量。最后,我们提出了一种计算更有效的概括,该概括可与预定义的群集数量一起使用,并根据我们的极化基线方法改善了高维优化的方法。
In this paper we propose polarized consensus-based dynamics in order to make consensus-based optimization (CBO) and sampling (CBS) applicable for objective functions with several global minima or distributions with many modes, respectively. For this, we ``polarize'' the dynamics with a localizing kernel and the resulting model can be viewed as a bounded confidence model for opinion formation in the presence of common objective. Instead of being attracted to a common weighted mean as in the original consensus-based methods, which prevents the detection of more than one minimum or mode, in our method every particle is attracted to a weighted mean which gives more weight to nearby particles. We prove that in the mean-field regime the polarized CBS dynamics are unbiased for Gaussian targets. We also prove that in the zero temperature limit and for sufficiently well-behaved strongly convex objectives the solution of the Fokker--Planck equation converges in the Wasserstein-2 distance to a Dirac measure at the minimizer. Finally, we propose a computationally more efficient generalization which works with a predefined number of clusters and improves upon our polarized baseline method for high-dimensional optimization.