A Choice of Criterion Parameters in a Linearization of Regression Models
نویسنده
چکیده
There are many results which are obtained in the theory of nonlinear regression models; nevertheless much more and simpler inferences may be made in linear models. Thus it is of some importance to analyze situations where a nonlinear model can be substituted by a linear one. Some rules how to proceed in a linearization of regression models are given in [K1], [K2]. Several parameters (criterion parameters) have to be chosen in the mentioned procedures. In the following it is shown that some relations among these parameters and some natural restrictions on them exist.
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