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The Maximum Lq-Likelihood Method: An Application to Extreme Quantile Estimation in Finance

机译:最大Lq-似然法:金融极端分位数估计的应用

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摘要

Estimating financial risk is a critical issue for banks and insurance companies. Recently, quantile estimation based on extreme value theory (EVT) has found a successful domain of application in such a context, outperforming other methods. Given a parametric model provided by EVT, a natural approach is maximum likelihood estimation. Although the resulting estimator is asymptotically efficient, often the number of observations available to estimate the parameters of the EVT models is too small to make the large sample property trustworthy. In this paper, we study a new estimator of the parameters, the maximum Lq-likelihood estimator (MLqE), introduced by Ferrari and Yang (Estimation of tail probability via the maximum Lq-likelihood method, Technical Report 659, School of Statistics, University of Minnesota, 2007 http//:www.stat.umn.edu/~dferrari/research/techrep659.pdf). We show that the MLqE outperforms the standard MLE, when estimating tail probabilities and quantiles of the generalized extreme value (GEV) and the generalized Pareto (GP) distributions. First, we assess the relative efficiency between the MLqE and the MLE for various sample sizes, using Monte Carlo simulations. Second, we analyze the performance of the MLqE for extreme quantile estimation using real-world financial data. The MLqE is characterized by a distortion parameter q and extends the traditional log-likelihood maximization procedure. When q→1, the new estimator approaches the traditional maximum likelihood estimator (MLE), recovering its desirable asymptotic properties; when q ≠ 1 and the sample size is moderate or small, the MLqE successfully trades bias for variance, resulting in an overall gain in terms of accuracy (mean squared error).
机译:对于银行和保险公司而言,估计金融风险是至关重要的问题。最近,基于极值理论(EVT)的分位数估计已发现在这种情况下的成功应用领域,胜过其他方法。给定EVT提供的参数模型,自然的方法是最大似然估计。尽管最终的估计器渐近有效,但是可用于估计EVT模型参数的观测值的数量通常太少,不足以使大样本属性值得信赖。在本文中,我们研究了一种新的参数估算器,即最大Lq似然估计器(MLqE),由Ferrari和Yang提出(通过最大Lq似然方法估算尾部概率,技术报告659,大学统计学院明尼苏达州,2007年http:///:www.stat.umn.edu/~dferrari/research/techrep659.pdf)。我们显示,当估计广义极值(GEV)和广义帕累托(GP)分布的尾部概率和分位数时,MLqE优于标准MLE。首先,我们使用蒙特卡洛模拟评估了各种样本量的MLqE和MLE之间的相对效率。其次,我们使用实际金融数据分析MLqE进行极端分位数估计的性能。 MLqE的特征在于失真参数q,并扩展了传统的对数似然最大化过程。当q→1时,新的估计器接近传统的最大似然估计器(MLE),恢复其理想的渐近性质;当q≠1且样本大小为中或小时,MLqE成功地将偏差换成方差,从而在准确性(均方误差)方面获得了总体收益。

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