In this paper, different strands of literature are combined in order to obtain algorithms for semi-parametric estimation of discrete choice models that include the modelling of unobserved heterogeneity by using mixing distributions for the parameters defining the preferences. The models use the theory on non-parametric maximum likelihood estimation (NP-MLE) that has been developed for general mixing models. The expectation-maximization (EM) techniques used in the NP-MLE literature are combined with strategies for choosing appropriate approximating models using adaptive grid techniques. \\ Jointly this leads to techniques for specification and estimation that can be used to obtain a consistent specification of the mixing distribution. Additionally, also algorithms for the estimation are developed that help to decrease problems due to the curse of dimensionality. \\ The proposed algorithms are demonstrated in a small scale simulation study to be useful for the specification and estimation of mixture models in the discrete choice context providing some information on the specification of the mixing distribution. The simulations document that some aspects of the mixing distribution such as the expectation can be estimated reliably. They also demonstrate, however, that typically different approximations to the mixing distribution lead to similar values of the likelihood and hence are hard to discriminate. Therefore it does not appear to be possible to reliably infer the most appropriate parametric form for the estimated mixing distribution.
翻译:在本文中,对不同选择模型的半参数估计进行了各种文献的组合,以获得对离散选择模型进行半参数估计的算法,其中包括使用混合分布法来模拟未观测到的异质性模型,这些模型使用为一般混合模型开发的非参数最大可能性估计理论(NP-MLE);NP-MLE文献中使用的预期-最大化技术与利用适应性电网技术选择适当接近模型的战略相结合。\\这共同导致规格和估计技术,这些技术可用来取得混合分布的一致规格。此外,还开发了估算算法,帮助减少非参数最大可能性估计(NP-MLE),这是为一般混合模型开发的非参数最大可能性估计(NP-MLE)的理论;在离散选择背景下,对混合物模型的规格和估计提供了一些关于混合分布规格的信息。模拟文件表明,混合分布的某些方面,如预期,可以可靠地估计,可以用来进行规格和估计。此外,估计的估算方法也表明,一般而言,最不同的混合分布估计是可靠的概率。