Artículos de revistas
The Multivariate Saddlepoint Approximation to the Distribution of Estimators: A General Approach
Fecha
2016-02Registro en:
Abril, Juan Carlos; Abril, María de Las Mercedes; Martinez, Carlos Ismael; The Multivariate Saddlepoint Approximation to the Distribution of Estimators: A General Approach; David Publishing; Journal of Mathematics and System Science; 6; 2-2016; 53-59
2159-5291
CONICET Digital
CONICET
Autor
Abril, Juan Carlos
Abril, María de Las Mercedes
Martinez, Carlos Ismael
Resumen
We develop the theory of multivariate saddlepoint approximations. Our treatment differs from the one in Barndorff-Nielsen and Cox (1979, equation (4.7)) in two aspects: 1) our results are satisfied for random vectors that are not necessarily sums of independent and identically distributed random vectors, and 2) we consider that the sample is taken from any distribution, not necessarily a member of the exponential family of densities. We also show the relationship with the corresponding multivariate Edgeworth approximations whose general treatment was developed by Durbin in 1980, emphasizing that the basic assumptions that support the validity of both approaches are essentially similar.