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Actuarial science / Copula / Dirichlet process / Correlation and dependence / Conjugate prior / Mixture model / Normal distribution / Johann Peter Gustav Lejeune Dirichlet / Parametric model / Statistics / Statistical dependence / Statistical models
Date: 2010-05-13 11:28:30
Actuarial science
Copula
Dirichlet process
Correlation and dependence
Conjugate prior
Mixture model
Normal distribution
Johann Peter Gustav Lejeune Dirichlet
Parametric model
Statistics
Statistical dependence
Statistical models

Nonparametric Spatial Models for Extremes: Application to Extreme Temperature Data. ∗ Montserrat Fuentes, John Henry, and Brian Reich SUMMARY

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