Robust estimation of Pareto-type tail index through an exponential regression model
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Taylor & Francis Group
Abstract
In this paper, we introduce a robust estimator of the tail index of a
Pareto-type distribution. The estimator is obtained through the use
of the minimum density power divergence with an exponential
regression model for log-spacings of top order statistics. The pro posed estimator is compared to existing minimum density power
divergence estimators of the tail index based on fitting an extended
Pareto distribution and exponential regression model on log-ratio of
spacings of order statistics. We derive the influence function and
gross error sensitivity of the proposed estimator of the tail index to
study its robustness properties. In addition, a simulation study is
conducted to assess the performance of the estimators under different contaminated samples from different distributions. The results
show that our proposed estimator of the tail index has better mean
square errors and is less sensitive to an increase in the number of
top order statistics. In addition, the estimation of the exponential
regression model yields estimates of second-order parameters that
can be used for estimation of extreme events such as quantiles and
exceedance probabilities. The proposed estimator is illustrated with
practical datasets on insurance claims and calcium content in
soil samples.
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Research Article