Abstract Linear and nonlinear exponential family and quasi-likelihood regression models form a class of models with a structure that invites using one algorithmic framework to compute parameter estimates and regression diagnostics. This framework extends our work on nonlinear least squares; it includes iteratively reweighted least squares but also encompasses secant updates for part of the Hessian matrix of the likelihood or quasi-likelihood function along with tests for when to use this information. The framework also provides basic machinery for computing "leave one out"-style regression diagnostics. We describe the framework, discuss some implementation details, and present some numerical experience.
Tian XiaXuejun JiangXueren Wang
Tian XiaFanchao KongShunfang WangXueren Wang
David S. BunchDavid M. GayRoy E. Welsch