Using a Laplace approximation to estimate the random coefficients logit model by non-linear least squares
Current methods of estimating the random coefficients logit model employ simulations of the distribution of the taste parameters through pseudo-random sequences. These methods suffer from difficulties in estimating correlations between parameters and computational limitations such as the curse of dimensionality. This paper provides a solution to these problems by approximating the integral expression of the expected choice probability using a multivariate extension of the Laplace approximation. Simulation results reveal that our method performs very well, both in terms of accuracy and computational time.
Year of publication: |
2006-01
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Authors: | Harding, Matthew C. ; Hausman, Jerry |
Institutions: | Centre for Microdata Methods and Practice (CEMMAP) |
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