The Many Faces of Logistic Regression

Authors
Citation
Strauss, David, The Many Faces of Logistic Regression, American statistician , 46(4), 1992, pp. 321-327
Journal title
ISSN journal
00031305
Volume
46
Issue
4
Year of publication
1992
Pages
321 - 327
Database
ACNP
SICI code
Abstract
Logistic regression has found wide acceptance as a model for the dependence of a binary response variable on a vector of explanatory variables.It can also be used, however, as a maximization algorithm for fitting a variety of other parametric models.The easy availability of logistic regression in standard packages is a major advantage; further, the regression diagnostics routinely supplied are frequently useful, even though the model being fitted is not logistic.In some cases the objective function maximized is a likelihood, but the method seems to arise especially often in the maximization of a so-called pseudolikeli-hood.Applications include models from choice theory, spatial modeling, random graph theory, and educational testing.