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首页> 外文期刊>Astin bulletin >BEYOND THE PEARSON CORRELATION: HEAVY-TAILED RISKS, WEIGHTED GINI CORRELATIONS, AND A GINI-TYPE WEIGHTED INSURANCE PRICING MODEL
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BEYOND THE PEARSON CORRELATION: HEAVY-TAILED RISKS, WEIGHTED GINI CORRELATIONS, AND A GINI-TYPE WEIGHTED INSURANCE PRICING MODEL

机译:超越皮尔逊相关性:重磅的风险,加权的基尼相关性和基因型的加权保险定价模型

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摘要

Gini-type correlation coefficients have become increasingly important in a variety of research areas, including economics, insurance and finance, where modelling with heavy-tailed distributions is of pivotal importance. In such situations, naturally, the classical Pearson correlation coefficient is of little use. On the other hand, it has been observed that when light-tailed situations are of interest, and hence when both the Gini-type and Pearson correlation coefficients are well defined and finite, these coefficients are related and sometimes even coincide. In general, understanding how these correlation coefficients are related has been an illusive task. In this paper, we put forward arguments that establish such a connection via certain regression-type equations. This, in turn, allows us to introduce a Gini-type weighted insurance pricing model that works in heavy-tailed situations and thus provides a natural alternative to the classical capital asset pricing model. We illustrate our theoretical considerations using several bivariate distributions, such as elliptical and those with heavy-tailed Pareto margins.
机译:基尼型相关系数在包括经济,保险和金融在内的许多研究领域中变得越来越重要,在这些领域中,具有重尾分布的建模至关重要。在这种情况下,自然地,经典的Pearson相关系数几乎没有用。另一方面,已经观察到,当关注轻尾情况时,因此,当吉尼型和皮尔逊相关系数都被很好地定义和限定时,这些系数是相关的,有时甚至是重合的。通常,了解这些相关系数之间的关系是一项艰巨的任务。在本文中,我们提出了通过某些回归类型方程建立这种联系的论点。反过来,这又使我们能够引入基尼式加权保险定价模型,该模型可在重尾情况下工作,从而为传统的资本资产定价模型提供了自然的替代方法。我们使用几种双变量分布(例如椭圆形和具有重尾帕累托边距的分布)说明了我们的理论考虑。

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