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Generating Random Variates via Kernel Density Estimation and Radial Basis Function Based Neural Networks

机译:通过核密度估计和基于径向基函数的神经网络生成随机变量

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When modeling phenomena that cannot be studied by deterministic analytical approaches, one of the main tasks is to generate random variates. The widely-used techniques, such as the inverse transformation, convolution, and rejection-acceptance methods, involve a significant amount of statistical work and do not provide satisfactory results when the data do not conform to the known probability density functions. This study aims to propose an alternative nonparametric method for generating random variables that combines kernel density estimation (KDE). and radial basis function based neural networks (RBFBNNs). We evaluate the method's performance using Poisson. triangular, and exponential probability density distributions and assessed its utility for unknown distributions. The results show that the model's effectiveness depends substantially on selecting an appropriate bandwidth value for KDE and a certain minimum number of data points to train the algorithm, the proposed method enabled us to achieve an R~2 value between 0.91 and 0.99 for analyzed distributions.
机译:当对无法通过确定性分析方法研究的现象进行建模时,主要任务之一是生成随机变量。逆变换,卷积和拒绝接受方法等广泛使用的技术涉及大量的统计工作,并且当数据不符合已知的概率密度函数时不能提供令人满意的结果。这项研究的目的是提出一种替代的非参数方法,用于生成结合内核密度估计(KDE)的随机变量。和基于径向基函数的神经网络(RBFBNN)。我们使用泊松(Poisson)评估该方法的性能。三角和指数概率密度分布,并评估其在未知分布中的效用。结果表明,该模型的有效性主要取决于为KDE选择合适的带宽值和一定数量的最小数据点来训练算法,所提出的方法使我们能够获得分析分布的R〜2值在0.91至0.99之间。

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