处理线性回归模型中的线性依赖性:几乎无偏的修正岭型估计器

IF 2.7 Q2 MULTIDISCIPLINARY SCIENCES Scientific African Pub Date : 2024-07-14 DOI:10.1016/j.sciaf.2024.e02324
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引用次数: 0

摘要

线性回归模型是一种广泛使用的统计工具,是大多数建模概念的基础。通常采用普通最小二乘估计法来估计模型参数。在不违反经典回归假设的情况下,该估计器被认为是有效的。然而,当模型违反了回归的基本假设时,估计器就会表现不佳。其中一个违反的假设是多重共线性问题。当模型的自变量之间存在相关性时,就会出现这个问题。为了解决这个问题,已经提出了很多估计方法,但人们仍在继续寻找更好的估计方法。本研究提出了一种几乎无偏的修正脊型(AUMRT)估计器,事实证明该估计器比现有估计器更优越。AUMRT 的性能通过理论证明、模拟和实际数据应用得到了证实。理论研究结果强调了所提方法的优越性,而模拟研究的结果则强化了这一概念。具体来说,模拟结果明确表明,在特定条件下,所提出的估计方法优于本研究中考虑的所有其他方法。此外,波特兰水泥的实际应用验证也证实了理论论断和模拟结果。
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Handling linear dependency in linear regression models: Almost unbiased modified ridge-type estimator

The linear regression model is a widely used statistical tool that forms most modelling concepts' basis. The ordinary least square estimator is often adopted to estimate the model's parameters. The estimator is considered efficient when there are no violations of the classical regression assumptions. However, the estimator underperforms when the model violates the underlying assumptions of regression. One of the violated assumptions is the problem of multicollinearity. The problem occurs when there is a correlation among the model's independent variables. Many estimators have been proposed to solve this problem but the search for a better estimator continues. This study proposes an almost unbiased modified ridge-type (AUMRT) estimator which has proved to be comparatively superior to the existing ones. The performance of AUMRT was proven through theoretical proofs, simulations, and practical application to real-life data. The theoretical findings underscore the superiority of the proposed method, a notion reinforced by the outcomes of the simulation study. Specifically, the simulation results unequivocally demonstrate that, under specific conditions, the proposed estimator outperforms all other methods considered in this study. Moreover, validation through real-life application with Portland cement corroborates both the theoretical assertions and the simulation findings.

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来源期刊
Scientific African
Scientific African Multidisciplinary-Multidisciplinary
CiteScore
5.60
自引率
3.40%
发文量
332
审稿时长
10 weeks
期刊最新文献
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