贝叶斯和频率尾部概率估计的比较

Nan Shen, B. Gonz'alez, L. Pericchi
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引用次数: 1

摘要

尾概率在极值理论中占有重要地位。有时,估计极端事件尾部概率的两种方法(贝叶斯方法和频率方法)得出的结论可能相差很大。1999年,委内瑞拉一场造成3万多人死亡的降雨没有被简单的频率极值技术捕捉到。然而,如果使用贝叶斯推理来考虑参数的不确定性,并充分利用可用的数据[4],那么这种灾难性降雨并不令人惊讶。本文研究了尾概率的贝叶斯估计量总是高于频率估计量的原因。这种现象的充分条件是通过詹森不等式和泰勒级数近似建立的,两者都指向分布函数的凸性。
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Comparison Between Bayesian and Frequentist Tail Probability Estimates
Tail probability plays an important part in the extreme value theory. Sometimes the conclusions from two approaches for estimating the tail probability of extreme events, the Bayesian and the frequentist methods, can differ a lot. In 1999, a rainfall that caused more than 30,000 deaths in Venezuela was not captured by the simple frequentist extreme value techniques. However, this catastrophic rainfall was not surprising if the Bayesian inference was used to allow for parameter uncertainty and the full available data was exploited [4]. In this paper, we investigate the reasons that the Bayesian estimator of the tail probability is always higher than the frequentist estimator. Sufficient conditions for this phenomenon are established both by using Jensen’s Inequality and by looking at Taylor series approximations, both of which point to the convexity of the distribution function.
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