Title of article :
Maximum likelihood estimation of limited and discrete dependent variable models with nested random effects
Author/Authors :
Sophia Rabe-Hesketh، نويسنده , , Sophia and Skrondal، نويسنده , , Anders and Pickles، نويسنده , , Andrew، نويسنده ,
Issue Information :
دوفصلنامه با شماره پیاپی سال 2005
Pages :
23
From page :
301
To page :
323
Abstract :
Gauss–Hermite quadrature is often used to evaluate and maximize the likelihood for random component probit models. Unfortunately, the estimates are biased for large cluster sizes and/or intraclass correlations. We show that adaptive quadrature largely overcomes these problems. We then extend the adaptive quadrature approach to general random coefficient models with limited and discrete dependent variables. The models can include several nested random effects (intercepts and coefficients) representing unobserved heterogeneity at different levels of a hierarchical dataset. The required multivariate integrals are evaluated efficiently using spherical quadrature rules. Simulations show that adaptive quadrature performs well in a wide range of situations.
Keywords :
Hierarchical models , Random effects , Spherical quadrature rules , Numerical Integration , Multilevel Models , Random Coefficients , Adaptive quadrature , GLLAMM
Journal title :
Journal of Econometrics
Serial Year :
2005
Journal title :
Journal of Econometrics
Record number :
1558795
Link To Document :
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