Publication | Closed Access
Robustness of Tail Index Estimation
15
Citations
23
References
1999
Year
EngineeringStatistical FoundationApplied EconometricsMathematical StatisticRobust StatisticTail Index EstimationEconomic AnalysisSample SizeEstimation TheoryStatisticsEconomicsEstimation StatisticRobust StatisticsEconometric MethodDecision RuleFinanceHill EstimatorBusinessEconometricsStatistical Inference
Abstract The implementation of the Hill estimator, which estimates the heaviness of the tail of a distribution, requires a choice of the number of extreme observations in the tails, r from a sample of size n where 2 ≤ r + 1 ≤ n. This article is concerned with a robust procedure of choosing an optimal r. Thus, an estimation procedure, δ s , based on the idea of spacing statistics, H(r) is developed. The proposed decision rule for choosing r under the squared error loss is found to be a simple function of the sample size. The proposed rule is then illustrated across a wide range of data, including insurance claims, currency exchange rate returns, and city size.
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