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COMPARING NON-NESTED REGRESSION MODELS

机译:比较非嵌套回归模型

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摘要

A method for comparing the fits of two non-nested models, based on a suggestion of Davidson and MacKinnon (1981), is developed in the context of linear and nonlinear regression with normal errors. Each model is regarded as a special case of an artificial ''supermodel'' and is obtained by restricting the value of a mixing parameter gamma to 0 or 1. To enable estimation and hypothesis testing for gamma, an approximate supermodel is used in which the fitted values from the individual models appear in place of the original parametrization. In the case of nested linear models, the proposed test essentially reproduces the standard F test. The calculations required are for the most part straightforward (basically, linear regression through the origin). The test is extended to cover situations in which serious bias in the maximum likelihood estimate of gamma occurs, simple approximate bounds for the bias being given. Two real datasets are used illustratively throughout. [References: 24]
机译:在戴维森和麦金农(1981)的建议下,在具有正态误差的线性和非线性回归的背景下,开发了一种用于比较两个非嵌套模型拟合的方法。每个模型都被视为人工“超模型”的特殊情况,并且通过将混合参数gamma的值限制为0或1来获得。为了能够进行γ的估计和假设检验,使用了一个近似的超模型,其中来自各个模型的拟合值将代替原始参数化显示。在嵌套线性模型的情况下,建议的测试实质上是复制标准F检验。所需的计算大部分是简单的(基本上是通过原点进行线性回归)。该测试扩展到涵盖伽玛最大似然估计中发生严重偏差的情况,并给出了偏差的简单近似范围。全文示例性地使用了两个真实的数据集。 [参考:24]

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