Relating statistical methods to machine learning predictive models

S. Agu, F. Elugwu
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Abstract

The paper reviewed the probabilistic feature of binomial distribution in the operation of machine learning (ML) classifications. It also examined a normal distribution and the concepts for approximating the binomial distribution to a normal distribution in estimating generalization error and its role in machine learning model selection. Again, it studied the confident interval and hypothesis testing and their estimations in the evaluation and comparison of the Performance metrics (Accuracy) of the learning algorithms. The paper highlighted their statistical significance to the ML models and classifiers as well as the differences in their utilization in statistics and machine learning. 
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将统计方法与机器学习预测模型联系起来
本文综述了机器学习分类操作中二项分布的概率特征。它还研究了正态分布和将二项分布近似为正态分布的概念,以估计泛化误差及其在机器学习模型选择中的作用。再次,研究了在评估和比较学习算法的性能指标(精度)时的置信区间和假设检验及其估计。本文强调了它们对ML模型和分类器的统计意义,以及它们在统计学和机器学习中的应用差异。
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