Multivariate Logit models are convenient to describe multivariate correlated binary choices as they provide closed-form likelihood functions. However, the computation time required for calculating choice probabilities increases exponentially with the number of choices, which makes maximum likelihood-based estimation infeasible when many choices are considered. To solve this, we propose three novel estimation methods: (i) stratified importance sampling, (ii) composite conditional likelihood (CCL), and (iii) generalized method of moments, which yield consistent estimates and still have similar small-sample bias to maximum likelihood. Our simulation study shows that computation times for CCL are much smaller and that its efficiency loss is small.
CITATION STYLE
Bel, K., Fok, D., & Paap, R. (2018). Parameter estimation in multivariate logit models with many binary choices. Econometric Reviews, 37(5), 534–550. https://doi.org/10.1080/07474938.2015.1093780
Mendeley helps you to discover research relevant for your work.