By John G. Kemeny, J. Laurie Snell, Anthony W. Knapp
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Additional resources for Denumerable Markov Chains
Efficiency bounds for distribution-free estimators from endogenously stratified samples: Summary of results. Working Paper, Department of Economics, University of Florida, Gainesville, FL. Cosslett, S. R. (1991). Efficient estimation from endogenously stratified samples with prior information on marginal probabilities. Working Paper, Department of Economics, Ohio State University, Columbus, OH. Cox, D. R. and D. V. Hinkley (1974). Theoretical Statistics. Chapman and Hall, London. DeMets, D. and M.
Optimal stock/flow panels. Working Paper 91-27, Department of Economics, Brown University, Providence, RI. Lee, L. F. (1989). Semiparametric maximum profile likelihood estimation of polytomous and sequential choice models. Discussion Paper 253, Center for Economic Research, Department of Economics, University of Minnesota, Minneapolis, MN. Lerman, S. and C. Manski (1975). Alternative sampling procedures for disaggregate choice model estimators. Transportation Res. Record 592, 24-28. Manski, C. (1975).
Lancaster (1983). The estimation of models of labour market behaviour. Rev. Econ. Stud. 50, 609-624. Cosslett, S. R. (1981a). Efficient estimation of discrete-choice models: In C. F. Manski and D. , Structural Analysis of Discrete Data with Econometric Applications. MIT Press, Cambridge, MA. Cosslett, S. R. (1981b). Maximum likelihood estimators for choice-based samples. Econometrica 49, 1289-1316. Cosslett, S. R. (1983). Distribution-free maximum likelihood estimator of the binary choice model.