Estimating Two-Sided Logit Models
* University of Wisconsin
John Allen Logan *
Logan (1996a) introduced a new micro-behavioral model of employment
opportunity and choice, and a multivariate statistical method based on the
micro-behavioral model. This article considers the connection between the
behavioral model and the two-sided logit (TSL) statistical method in more
detail than the original paper, discussing issues of parameter
identification, model constraints, data reduction, and practical
estimation. The article compares the EM gradient algorithm used in Logan
(1996a) with an accelerated EM gradient algorithm and with a public-domain
quasi-Newton algorithm. The latter two algorithms, now incorporated in a
single program, greatly enhance the practicality of TSL modeling.
Strategies for further development of TSL methods are also considered.