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Testing linearity in semiparametric regression models

机译:在半参数回归模型中测试线性

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One of the fundamental assumptions of a basic multiple linear regression model is that the contribution of each of the model terms is strictly linear. In many cases, this may be an excessive simplification of the complicated relationships. Moreover, it may be difficult or impossible to test the hypothesized model against all possible kinds of relevant alternative models. Therefore, tests that perform well under more general circumstances are also required. This paper considers the semiparametric model, where the contribution of one of the model terms may not be strictly linear, and also proposes an exact F-test for the situation. The method also allows dependent error terms. The performance of the proposed test is illustrated by simulation experiments and in real air pollution and health data.
机译:基本多元线性回归模型的基本假设之一是,每个模型项的贡献都是严格线性的。在许多情况下,这可能是对复杂关系的过度简化。此外,可能难以或不可能针对所有可能种类的相关替代模型来测试假设模型。因此,还需要在更一般的情况下性能良好的测试。本文考虑了半参数模型,其中一个模型项的贡献可能不是严格线性的,并且针对这种情况提出了精确的F检验。该方法还允许相关的误差项。拟议测试的性能通过模拟实验以及实际空气污染和健康数据进行了说明。

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