Unveiling the intricacies of the normal distribution: From theory to applications

Xingyu Ye
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Abstract

The normal distribution, also referred to as the Gaussian distribution, holds immense significance across multiple domains, from mathematics and physics to engineering and statistics. Beginning with its probabilistic foundations, the normal distribution is characterized by its bell-shaped curve, symmetric nature around the mean, and parameterization by the mean () and standard deviation (). Originating from the seminal works of Abraham de Moivre and further advanced by Gauss and Laplace, its theoretical underpinnings have significantly influenced statistical theory. Laplaces insights regarding errors and the normal distribution paved the way for its widespread adoption in statistical analysis. The normal distribution serves as a powerful tool in various applications, including estimating frequency distributions, analyzing student performance, establishing medical reference values, and forming the basis for numerous statistical methods. This paper explores the profound implications of the normal distribution, encompassing its definition, attributes, historical development, and practical applications, highlighting the enduring importance and versatility of the normal distribution in both theoretical and practical contexts.
揭开正态分布的神秘面纱:从理论到应用
正态分布又称高斯分布,在数学、物理学、工程学和统计学等多个领域都具有重要意义。从概率论的基础开始,正态分布的特点是钟形曲线、围绕均值的对称性以及由均值()和标准偏差()构成的参数化。正态分布起源于亚伯拉罕-德-莫伊弗尔的开创性著作,并由高斯和拉普拉斯进一步推进,其理论基础对统计理论产生了重大影响。拉普拉斯关于误差和正态分布的见解为正态分布在统计分析中的广泛应用铺平了道路。正态分布在各种应用中都是强有力的工具,包括估计频率分布、分析学生成绩、建立医学参考值,以及构成众多统计方法的基础。本文从正态分布的定义、属性、历史发展和实际应用等方面探讨了正态分布的深远影响,强调了正态分布在理论和实践方面的持久重要性和多功能性。
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