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Importance Sampling Based on the Kernel Density Estimator

机译:基于核密度估计器的重要性抽样

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Importance Sampling is an unbiased sampling method used to sample random variables form different densities than originally defined. The importance sampling densities should be constructed to pick up 'important' random variables to improve the estimation of a interesting statistics. In this article, we present an importance sampling in which its density function is constructed from the kernel density estimators. This method can generate a sufficient number of samples, and then increase the accuracy of the probability estimate.
机译:重要性采样是一种用于采样随机变量的无偏的采样方法,形成不同的密度而多定义的。应该构建重要的采样密度以拾取“重要”随机变量,以改善一个有趣的统计数据的估计。在本文中,我们提出了一种重要性采样,其中其密度函数由核密度估计器构成。该方法可以产生足够数量的样本,然后提高概率估计的准确性。

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