Temporal Dependence in Limited Dependent Variable Models: Theoretical and Monte-Carlo Results
Vassilis Hajivassiliou
No 803, Cowles Foundation Discussion Papers from Cowles Foundation for Research in Economics, Yale University
Abstract:
This paper analyzes the consistency properties of classical estimators for limited dependent variables models, under conditions of serial correlation in the unobservables. A unified method of proof is used to show that for certain cases (e.g., Probit, Tobit and Normal Switching Regimes models, which are normality-based) estimators that neglect particular types of serial dependence (specifically, corresponding to the class of "mixing" processes) are still consistent. The same line of proof fails for the analogues to the above models that impose logistic distributional assumptions, thus indicating that normality plays a special role in these problems. Sets of Monte-Carlo experiments are then carried out to investigate these theoretical results.
Keywords: Consistency; serial dependence; mixing processes; limited dependent variables models; probit; logit; tobit; normality (search for similar items in EconPapers)
Pages: 38 pages
Date: 1986-08
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Citations: View citations in EconPapers (1)
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