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Robust estimation methods for a class of log-linear count time series models

机译:一类对数线性计数时间序列模型的鲁棒估计方法

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We study robust estimation of a log-linear Poisson model for count time series analysis. More specifically, we study robust versions of maximum likelihood estimators (MLEs) under three different forms of interventions: additive outliers (AOs), transient shifts (TSs) and level shifts (LSs). We estimate the parameters using the MLE, the conditionally unbiased bounded-influence estimator and the Mallows quasi-likelihood estimator and compare all three estimators in terms of their mean-square error, bias and mean absolute error. Our empirical results illustrate that under a LS or a TS there are no significant differences among the three estimators and the most interesting results are obtained in the presence of AOs. The results are complemented by a real data example.
机译:我们研究对数线性泊松模型的鲁棒估计,用于计数时间序列分析。更具体地说,我们在三种不同形式的干预措施下研究最大似然估计器(MLE)的稳健版本:加性离群值(AOs),瞬态漂移(TSs)和水平漂移(LSs)。我们使用MLE,条件无条件的有界影响估计器和Mallows拟似然估计器来估计参数,并根据均方误差,偏差和平均绝对误差比较所有三个估计器。我们的经验结果表明,在LS或TS下,三个估计量之间没有显着差异,并且在存在AO的情况下获得了最有趣的结果。实际数据示例补充了结果。

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