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首页> 外文期刊>Vietnam Journal of Computer Science >A Median-Based Machine-Learning Approach for Predicting Random Sampling Bernoulli Distribution Parameter
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A Median-Based Machine-Learning Approach for Predicting Random Sampling Bernoulli Distribution Parameter

机译:基于中值的机器学习方法预测随机采样伯努利分布参数

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摘要

In real-life applications, we often do not have population data but we can collect several samples from a large sample size of data. In this paper, we propose a median-based machine-learning approach and algorithm to predict the parameter of the Bernoulli distribution. We illustrate the proposed median approach by generating various sample datasets from Bernoulli population distribution to validate the accuracy of the proposed approach. We also analyze the effectiveness of the median methods using machine-learning techniques including correction method and logistic regression. Our results show that the median-based measure outperforms the mean measure in the applications of machine learning using sampling distribution approaches.
机译:在现实生活中,我们通常没有总体数据,但是我们可以从大量数据样本中收集多个样本。在本文中,我们提出了一种基于中位数的机器学习方法和算法来预测伯努利分布的参数。我们通过从伯努利人口分布中生成各种样本数据集来验证所提出方法的准确性,从而说明所提出的中位数方法。我们还使用机器学习技术(包括校正方法和逻辑回归)来分析中位数方法的有效性。我们的结果表明,在使用采样分布方法的机器学习应用中,基于中位数的度量优于平均度量。

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