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Extreme values identification in regression using a peaks-over-threshold approach
Authors:Tong Siu Tung Wong  Wai Keung Li
Institution:Department of Statistics and Actuarial Science, The University of Hong Kong, Hong Kong
Abstract:The problem of heavy tail in regression models is studied. It is proposed that regression models are estimated by a standard procedure and a statistical check for heavy tail using residuals is conducted as a tool for regression diagnostic. Using the peaks-over-threshold approach, the generalized Pareto distribution quantifies the degree of heavy tail by the extreme value index. The number of excesses is determined by means of an innovative threshold model which partitions the random sample into extreme values and ordinary values. The overall decision on a significant heavy tail is justified by both a statistical test and a quantile–quantile plot. The usefulness of the approach includes justification of goodness of fit of the estimated regression model and quantification of the occurrence of extremal events. The proposed methodology is supplemented by surface ozone level in the city center of Leeds.
Keywords:exponential threshold model  extreme value index  ozone  peaks-over-threshold  regression diagnostic
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