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Robust Estimation by Means of Scaled Bregman Power Distances. Part II. Extreme Values

机译:通过缩放的Bregman幂距离进行稳健估计。第二部分极端值

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In the separate Part I (see [23]), we have derived a new robustness-featured parameter-estimation framework, in terms of minimization of the scaled Bregman power distances of Stummer and Vajda [25] (see also [24]); this leads to a wide range of outlier-robust alternatives to the omnipresent non-robust method of maximum-likelihood-examination. In the current Part II, we provide some applications of our framework to data from potentially rare but dangerous events (modeled with approximate extreme value distributions), by estimating the correspondingly characterizing extreme value index (reciprocal of tail index); as a special subcase, we recover the method of Ghosh [9] which is essentially a robus-tification of the procedure of Matthys and Beirlant [19]. Some simulation studies demonstrate the potential partial superiority of our method.
机译:在单独的第一部分(见[23])中,我们根据Stummer和Vajda的可缩放Bregman幂距离的最小化[25]推导了一个新的具有鲁棒性的参数估计框架(见[24])。这导致了对于无所不在的最大似然性检验的非鲁棒方法的广泛异常鲁棒替代方案。在当前的第二部分中,我们通过估计相应的特征性极值指数(尾部指数的倒数),为潜在的罕见但危险事件(以近似的极值分布建模)中的数据提供了框架的某些应用;作为一个特殊的子案例,我们恢复了Ghosh [9]的方法,该方法本质上是Matthys和Beirlant [19]程序的鲁棒化。一些仿真研究证明了我们方法的潜在部分优势。

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