非正态分布回归分析中的最优修剪比例

IF 1.7 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Journal of Business Analytics Pub Date : 2021-11-29 DOI:10.1080/2573234X.2021.2007803
Amit Mitra, Pankush Kalgotra
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引用次数: 0

摘要

回归分析是一种广泛应用于商业决策的建模工具。然而,正确应用这种方法需要满足与模型相关的某些假设。我们关注的假设是响应变量的正态性,这与误差分量的正态性假设直接相关。在许多商业领域,如金融、市场营销、信息系统、运营和医疗保健,所选择的因变量并不具有固有的正态分布。在回归环境中,假设模型参数和自变量不变,因此随机误差分量的分布会影响因变量的分布。在这里,我们研究了对称和非对称误差分布对估计模型参数性能的影响。为了创建稳健的估计,通过修剪响应变量的过程,我们通过模拟过程研究了修剪估计量相对于普通最小二乘估计量(OLS)的有效性。因此,为了最小化裁剪估计量的均方误差与OLS的均方误差之比,提出了最佳裁剪比例的建议。
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Optimal trimming proportion in regression analysis for non-normal distributions
ABSTRACT Regression analysis is a widely used modelling tool in business decision making. However, proper application of this methodology requires that certain assumptions, associated with the model, be satisfied. The assumption we focus on is the normality of the response variable, which is directly related to the assumption of normality of the error component. In a variety of fields in business, such as finance, marketing, information systems, operations, and healthcare, the selected dependent variable does not inherently have a normal distribution. In the regression context, where the model parameters and independent variables are assumed to be constant, the distribution of the random error component thus influences the distribution of the dependent variable. Here, we study the impact of symmetric and asymmetric error distributions on the performance of the estimated model parameters. To create robust estimates, through a process of trimming the response variable, we study the effectiveness of the trimmed estimators with respect to the ordinary least squares estimator (OLS) via a simulation procedure. Accordingly, to minimise the ratio of the mean squared error of the trimmed estimator to that of the OLS, a recommendation is developed for the optimal trimming proportion.
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来源期刊
Journal of Business Analytics
Journal of Business Analytics Business, Management and Accounting-Management Information Systems
CiteScore
2.50
自引率
0.00%
发文量
13
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