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首页> 外文期刊>Journal of applied statistics >A mixture-based approach to robust analysis of generalised linear models
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A mixture-based approach to robust analysis of generalised linear models

机译:基于混合的方法对广义线性模型进行鲁棒性分析

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摘要

A method for robustness in linear models is to assume that there is a mixture of standard and outlier observations with a different error variance for each class. For generalised linear models (GLMs) the mixture model approach is more difficult as the error variance for many distributions has a fixed relationship to the mean. This model is extended to GLMs by changing the classes to one where the standard class is a standard GLM and the outlier class which is an overdispersed GLM achieved by including a random effect term in the linear predictor. The advantages of this method are it can be extended to any model with a linear predictor, and outlier observations can be easily identified. Using simulation the model is compared to an M-estimator, and found to have improved bias and coverage. The method is demonstrated on three examples.
机译:线性模型中的稳健性方法是假设存在标准观测值和异常观测值的混合,每个类别的误差方差都不同。对于广义线性模型(GLM),混合模型方法更加困难,因为许多分布的误差方差与均值具有固定关系。通过将类别更改为标准模型是标准GLM,而离群值类别是通过在线性预测变量中包含随机效应项而实现的过度分散的GLM,该模型可以扩展到GLM。这种方法的优点是它可以扩展到具有线性预测变量的任何模型,并且可以轻松地识别异常值。使用仿真将该模型与M估计器进行比较,发现该模型具有更好的偏差和覆盖范围。在三个示例上演示了该方法。

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