Title :
No free lunch with the sandwich [sandwich estimator]
Author :
Rivals, Isabelle ; Personnaz, Léon
Author_Institution :
Equipe de Statistique Appliquee, Ecole Superieure de Phys. et de Chimie Industrielles, Paris, France
Abstract :
In nonlinear regression theory, the sandwich estimator of the covariance matrix of the model parameters is known as a consistent estimator, even when the parameterized model does not contain the regression. However, in the latter case, we emphasize the fact that the consistency of the sandwich holds only if the inputs of the training set are the values of independent identically distributed random variables. Thus, in the frequent practical modeling situation involving a training set whose inputs are deliberately chosen and imposed by the designer, we question the opportunity to use the sandwich estimator rather than the simple estimator based on the inverse squared Jacobian.
Keywords :
Jacobian matrices; covariance matrices; learning (artificial intelligence); neural nets; parameter estimation; regression analysis; statistical testing; confidence intervals; covariance matrix; independent identically distributed random variables; independent not identically distributed random variables; inverse squared Jacobian; linear Taylor expansion; neural networks; nonlinear regression theory; sandwich estimator; Covariance matrix; Design for experiments; Industrial training; Jacobian matrices; Least squares approximation; Neural networks; Parameter estimation; Random variables; Taylor series; Testing;
Journal_Title :
Neural Networks, IEEE Transactions on
DOI :
10.1109/TNN.2003.820671