Fast simulated maximum likelihood estimation of the spatial probit model capable of handling large samples
Document Type
Article
Publication Date
1-1-2016
Abstract
We show how to quickly estimate spatial probit models for large data sets using maximum likelihood. Like Beron and Vijverberg (2004), we use the GHK (Geweke-Hajivassiliou-Keane) algorithm to perform maximum simulated likelihood estimation. However, using the GHK for large sample sizes has been viewed as extremely difficult (Wang, Iglesias, & Wooldridge, 2013). Nonetheless, for sparse covariance and precision matrices often encountered in spatial settings, the GHK can be applied to very large sample sizes as its operation counts and memory requirements increase almost linearly with n when using sparse matrix techniques.
Publication Source (Journal or Book title)
Advances in Econometrics
First Page
3
Last Page
34
Recommended Citation
Pace, R., & LeSage, J. (2016). Fast simulated maximum likelihood estimation of the spatial probit model capable of handling large samples. Advances in Econometrics, 37, 3-34. https://doi.org/10.1108/S0731-905320160000037008