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Stationary Fokker - Planck Learning for the Optimization of Parameters in Nonlinear Models

机译:固定式Fokker - 普朗克学习非线性模型中参数的优化

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A new stochastic procedure is applied to optimization problems that arise in the nonlinear modeling of data. The proposed technique is an implementation of a recently introduced algorithm for the construction of probability densities that are consistent with the asymptotic statistical properties of general stochastic search processes. The obtained densities can be used, for instance, to draw suitable starting points in nonlinear optimization algorithms. The proposed setup is tested on a benchmark global optimization example and in the weight optimization of an artificial neural network model. Two additional examples that illustrate aspects that are specific to data modeling are outlined.
机译:一种新的随机程序应用于数据中非线性建模中出现的优化问题。所提出的技术是最近引入的算法的实现,用于构造与一般随机搜索过程的渐近统计特性一致的概率密度。例如,可以使用所获得的密度以在非线性优化算法中绘制合适的起始点。在基准全局优化示例和人工神经网络模型的重量优化中测试所提出的设置。概述了两个附加示例,其示出了特定于数据建模的方面。

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