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Small sample regression: Modeling with insufficient data

机译:小型样本回归:数据不足建模

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Modeling with a small set of samples will normally result in great variance. This research proposes a unique procedure for small sample regression systematically using the concept of robust Bayesian inference and a contamination prior. The approach enlarges the possible domain of population information and attempts to estimate regression parameters. A data augmentation step included in the procedure is devoted to enlarging the original small data set by adding new data to the original data set. It follows that when the expectation-maximization (EM) algorithm is used for outputting the hypothesis h=〈β,σ2〉, approximating the true (but unobservable) β∗ and σ2∗ based on the enlarged data set. Both the augmented data set and the used maximum likelihood estimate are generated from contaminated priors. The experiments provided herein exhibit that the proposed procedure can effectively lower mean squared error when modeling
机译:用一小组样品建模通常会导致差异很大。本研究提出了利用强大的贝叶斯推论和污染的概念来系统地提出了小型样本回归的独特程序。该方法扩大了人口信息的可能域并尝试估计回归参数。包括在过程中的数据增强步骤被致力于通过将新数据添加到原始数据集来放大原始小数据集。因此,当期望 - 最大化(EM)算法用于输出假设H = <β,σ 2时,近似真实(但不可接受)β*和σ 2 < / sup> *基于放大的数据集。增强数据集和使用的最大似然估计都是从受污染的前沿生成的。本文提供的实验表明,在建模时,所提出的程序可以有效地降低均方方误差

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