Pregibit: a family of binary choice models
Autor: | Wim P.M. Vijverberg, Chu-Ping C. Vijverberg |
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Rok vydání: | 2015 |
Předmět: |
Statistics and Probability
Economics and Econometrics 05 social sciences Logit Monte Carlo method Ordered probit Probit 01 natural sciences Linear probability model Outcome (probability) 010104 statistics & probability Multivariate probit model Mathematics (miscellaneous) Probit model 0502 economics and business Statistics Econometrics Economics 0101 mathematics Social Sciences (miscellaneous) 050205 econometrics |
Zdroj: | Empirical Economics. 50:901-932 |
ISSN: | 1435-8921 0377-7332 |
Popis: | The pregibit binary choice model is built on a distribution that allows symmetry or asymmetry and thick tails, thin tails, or no tails. Thus, the model is much more flexible than the traditional binary choice models: pregibit nests logit, approximately nests probit, loglog, cloglog, and gosset models and incorporates the linear probability model. Greater flexibility allows a more accurate estimation of the data-generating process, including asymmetric and thick/thin tails. We prove that the maximum likelihood estimator of the pregibit model is consistent and asymptotically normally distributed. A Monte Carlo analysis and two real-world examples show that probit and logit estimates may show misleading evidence in cases where a pregibit model is statistically preferred. One example concerns enrollment in post-secondary education in Belgium: The pregibit estimate of the enrollment gap between Belgian natives and foreign students is 50 % larger, and the type of high school (general, technical, catholic) is more influential. The second example examines the outcome of mortgage applications in the USA. Here, pregibit estimates assign a stronger role to variables that measure the financial strength of mortgage applicants and a weaker role to demographic characteristics including minority status. More importantly, the distribution of the disturbances proves to be seriously skewed: Pregibit indicates that even high-risk applicants (with a probit acceptance probability of nearly 0) have a positive probability of getting their mortgage application approved. Apparently, mortgage officers are more inclined to uncover reasons to make a mortgage deal than to send clients away empty-handed. |
Databáze: | OpenAIRE |
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