A Skew-Normal Copula-Driven GLMM
classification
📊 stat.ME
keywords
copulaskew-normalcopula-drivenfittingaddedadoptedalgorithmalongside
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This paper presents a method for fitting a copula-driven generalized linear mixed models. For added flexibility, the skew-normal copula is adopted for fitting. The correlation matrix of the skew-normal copula is used to capture the dependence structure within units, while the fixed and random effects coefficients are estimated through the mean of the copula. For estimation, a Monte Carlo expectation-maximization algorithm is developed. Simulations are shown alongside a real data example from the Framingham Heart Study.
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