Consider a distribution F with regularly varying tails of index −α. An estimation strategy for α, exploiting the relation between the behavior of the tail at infinity and of the characteristic function at the origin, is proposed. A semi-parametric regression model does the job: a nonparametric component controls the bias and a parametric one produces the actual estimate. Implementation of the estimation strategy is quite simple as it can rely on standard software packages for generalized additive models. A generalized cross validation procedure is suggested in order to handle the bias-variance trade-off. Theoretical properties of the proposed method are derived and simulations show the performance of this estimator in a wide range of cases. An application to data sets on city sizes, facing the debated issue of distinguishing Pareto-type tails from Log-normal tails, illustrates how the proposed method works in practice.
Semi-parametric regression estimation of the tail index / Jia, Mofei; Taufer, Emanuele; Dickson, Maria Michela. - In: ELECTRONIC JOURNAL OF STATISTICS. - ISSN 1935-7524. - ELETTRONICO. - 2018, 12:1(2018), pp. 224-248. [10.1214/18-EJS1394]
Semi-parametric regression estimation of the tail index
Jia, Mofei;Taufer, Emanuele;Dickson, Maria Michela
2018-01-01
Abstract
Consider a distribution F with regularly varying tails of index −α. An estimation strategy for α, exploiting the relation between the behavior of the tail at infinity and of the characteristic function at the origin, is proposed. A semi-parametric regression model does the job: a nonparametric component controls the bias and a parametric one produces the actual estimate. Implementation of the estimation strategy is quite simple as it can rely on standard software packages for generalized additive models. A generalized cross validation procedure is suggested in order to handle the bias-variance trade-off. Theoretical properties of the proposed method are derived and simulations show the performance of this estimator in a wide range of cases. An application to data sets on city sizes, facing the debated issue of distinguishing Pareto-type tails from Log-normal tails, illustrates how the proposed method works in practice.File | Dimensione | Formato | |
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