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A class of residuals for outlier identification in zero adjusted regression models

机译:零调整回归模型中的一类残差用于异常值识别

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摘要

Zero adjusted regression models are used to fit variables that are discrete at zero and continuous at some interval of the positive real numbers. Diagnostic analysis in these models is usually performed using the randomized quantile residual, which is useful for checking the overall adequacy of a zero adjusted regression model. However, it may fail to identify some outliers. In this work, we introduce a class of residuals for outlier identification in zero adjusted regression models. Monte Carlo simulation studies and two applications suggest that one of the residuals of the class introduced here has good properties and detects outliers that are not identified by the randomized quantile residual.
机译:零调整的回归模型用于适合零和持续离散的变量,并在正真数的某些间隔处连续。这些模型中通常使用随机定位剩余剩余的诊断分析,这对于检查零调整的回归模型的整体充分性是有用的。但是,它可能无法识别一些异常值。在这项工作中,我们在零调整后回归模型中介绍了一类用于异常识别的残差。 Monte Carlo仿真研究和两种应用表明,这里介绍的类的一个残留物具有良好的性质,并检测无随机定量残差未识别的异常值。

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