Exploring Multiple Regression Models: Key Concepts and Applications

Yanbo Ruan
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Abstract

Multiple regression analysis is a statistical method used to examine the relationship between a dependent variable and multiple independent variables. It extends the principles of simple linear regression to accommodate the complexity of real-world data, allowing researchers to study the combined effect of multiple predictors on an outcome of interest. This article provides a comprehensive overview of multiple regression analysis, including its theoretical foundations, practical applications, and key considerations. First, we discuss the basic concept of multiple regression and its historical development, tracing its evolution from simple linear regression. The article then delves into the methodology of multiple regression, covering topics such as model specification, estimation techniques, and model evaluation. Additionally, it explores advanced topics in multiple regression analysis, including multicollinearity, heteroskedasticity, and model selection. Real-world examples and case studies from a variety of fields illustrate the versatility and applicability of multiple regression analysis in empirical research. By providing a thorough understanding of multiple regression, this article aims to provide researchers with the knowledge and tools needed to effectively utilize this statistical technique in their own research.
探索多元回归模型:关键概念与应用
多元回归分析是一种用于研究因变量与多个自变量之间关系的统计方法。它扩展了简单线性回归的原理,以适应现实世界数据的复杂性,使研究人员能够研究多个预测因素对相关结果的综合影响。本文全面概述了多元回归分析,包括其理论基础、实际应用和主要注意事项。首先,我们讨论了多元回归的基本概念及其历史发展,追溯其从简单线性回归演变而来的过程。然后,文章深入探讨了多元回归的方法论,涵盖了模型规范、估计技术和模型评估等主题。此外,文章还探讨了多元回归分析的高级主题,包括多重共线性、异方差性和模型选择。来自不同领域的真实案例和案例研究说明了多元回归分析在实证研究中的多样性和适用性。通过提供对多元回归的透彻理解,本文旨在为研究人员提供所需的知识和工具,以便他们在自己的研究中有效利用这一统计技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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