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A data-based method for selecting tuning parameters in minimum distance estimators

机译:在最小距离估计器中选择调整参数的基于数据的方法

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摘要

A general method for selecting the tuning parameter in minimum distance estimators is proposed. The performance of this method, which involves minimising a data-based estimate of the asymptotic mean squared error function, is illustrated by its application to three different minimum distance estimators using simulated data. The choice of model family is subjective but information about the number and magnitude of outliers in the data is not needed because thereafter the method is entirely data-based. This approach is shown to optimise the performance of minimum distance methods by delivering estimators which are appropriate for the data. That is to say that, providing the correct family of models is chosen, the resulting estimators will be highly efficient when the method is applied to clean data and robust under contamination. Furthermore, utilising the asymptotic mean squared error function as a joint measure of robustness and efficiency in this way leads to a common framework for assessing the performance of many different minimum distance estimators. The relative merits of the three minimum distance estimators considered here are compared in detail and their performance, when the model family is normal, shown to rival that of the Huber estimator.
机译:提出了一种在最小距离估计器中选择调谐参数的通用方法。该方法的性能涉及最小化渐进均方误差函数的基于数据的估计,其通过使用模拟数据应用于三个不同的最小距离估计器来说明。模型家族的选择是主观的,但是不需要有关数据中异常值的数量和大小的信息,因为此后该方法完全基于数据。通过提供适用于数据的估算器,该方法可以优化最小距离方法的性能。也就是说,如果选择了正确的模型族,则当将该方法应用于干净数据并在污染下具有鲁棒性时,所得估计量将非常高效。此外,以这种方式将渐进均方误差函数用作鲁棒性和效率的联合量度,可得出用于评估许多不同最小距离估计器性能的通用框架。详细比较了此处考虑的三个最小距离估计量的相对优缺点,并在模型族正常时证明了它们的性能,与后者的Huber估计量相抗衡。

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