In this paper, we introduce reduced-bias estimators for the estimation of the tail index of a Pareto-type distribution. This is achieved through the use of a regularised weighted least squares with an exponential regression model for log-spacings of top order statistics. The asymptotic properties of the proposed estimators are investigated analytically and found to be asymptotically unbiased, consistent and normally distributed. Also, the finite sample behaviour of the estimators are studied through a simulations theory. The proposed estimators were found to yield low bias and MSE. In addition, the proposed estimators are illustrated through the estimation of the tail index of the underlying distribution of claims from the insurance industry.
翻译:在本文中,我们引入了用于估计帕雷托型分布尾部指数的减少位数估计值,这是通过使用固定的加权最小方块和指数回归模型来计算最高顺序统计的日志间隔实现的。对拟议估算器的无症状特性进行了分析调查,发现其无症状性能是不带偏见的、一贯的和通常分布的。此外,通过模拟理论来研究估算器的有限抽样行为。发现,拟议的估算器产生低偏差和MSE。此外,通过估计保险业基本索赔分配的尾部指数来说明拟议的估算值。