Quasi-likelihood functions, generalized linear models, and the Gauss—Newton method

R. W. M. Wedderburn(Experimental Station)
Biometrika
January 1, 1974
Cited by 1,953

Abstract

To define a likelihood we have to specify the form of distribution of the observations, but to define a quasi-likelihood function we need only specify a relation between the mean and variance of the observations and the quasi-likelihood can then be used for estimation. For a one-parameter exponential family the log likelihood is the same as the quasi-likelihood and it follows that assuming a one-parameter exponential family is the weakest sort of distributional assumption that can be made. The Gauss-Newton method for calculating nonlinear least squares estimates generalizes easily to deal with maximum quasi-likelihood estimates, and a rearrangement of this produces a generalization of the method described by Nelder & Wedderburn (1972).


Related Papers

No related papers found

Powered by citation graph analysis