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WORKING PAPER
What to do When Your Hessian is Not Invertible: Alternatives to Model Respecification in Nonlinear Estimation
Gill, Jeff
King, Gary
Abstract
What should a researcher do when statistical analysis software
terminates before completion with a message that the Hessian is not
invertable? The standard textbook advice is to respecify the model,
but this is another way of saying that the researcher should change
the question being asked. Obviously, however, computer programs
should not be in the business of deciding what questions are worthy
of study. Although noninvertable Hessians are sometimes signals of
poorly posed questions, nonsensical models, or inappropriate
estimators, they also frequently occur when information about the
quantities of interest does exist in the data, through the
likelihood function. We explain the problem in some detail and lay
out two preliminary proposals for ways of dealing with noninvertable
Hessians without changing the question asked.
Keywords
Cholesky generalized inverse generalized linear model Hessian importance sampling maximum likelihood pseudo-variance singular normal statistical computing
File
Uploaded
05-14-2002
Document ID Number
99
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