Publication | Closed Access
Robust Likelihood Methods Based on the Skew‐<i>t</i> and Related Distributions
217
Citations
47
References
2007
Year
Parameter EstimationEngineeringRare Event EstimationRobustness TestingRobustness (Computer Science)Robust Likelihood MethodsSkew‐ T DistributionParametric ClassMathematical StatisticRobust StatisticUncertainty QuantificationBiostatisticsBayesian MethodsPublic HealthEstimation TheoryStatisticsDensity EstimationRobustness ProblemRobust StatisticsRobust ModelingEconometricsStatistical Inference
Summary The robustness problem is tackled by adopting a parametric class of distributions flexible enough to match the behaviour of the observed data. In a variety of practical cases, one reasonable option is to consider distributions which include parameters to regulate their skewness and kurtosis. As a specific representative of this approach, the skew‐ t distribution is explored in more detail and reasons are given to adopt this option as a sensible general‐purpose compromise between robustness and simplicity, both of treatment and of interpretation of the outcome. Some theoretical arguments, outcomes of a few simulation experiments and various wide‐ranging examples with real data are provided in support of the claim.
| Year | Citations | |
|---|---|---|
Page 1
Page 1