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Regularized Maximum Likelihood Estimation for the Random Coefficients Model

Methodology 2021-08-17 v2 Applications

Abstract

The random coefficients model Yi=β0i+β1iX1i+β2iX2i++βdiXdiY_i={\beta_0}_i+{\beta_1}_i {X_1}_i+{\beta_2}_i {X_2}_i+\ldots+{\beta_d}_i {X_d}_i, with Xi\mathbf{X}_i, YiY_i, βi\mathbf{\beta}_i i.i.d, and βi\mathbf{\beta}_i independent of XiX_i is often used to capture unobserved heterogeneity in a population. We propose a quasi-maximum likelihood method to estimate the joint density distribution of the random coefficient model. This method implicitly involves the inversion of the Radon transformation in order to reconstruct the joint distribution, and hence is an inverse problem. Nonparametric estimation for the joint density of βi=(β0i,,βdi)\mathbf{\beta}_i=({\beta_0}_i,\ldots, {\beta_d}_i) based on kernel methods or Fourier inversion have been proposed in recent years. Most of these methods assume a heavy tailed design density fXf_\mathbf{X}. To add stability to the solution, we apply regularization methods. We analyze the convergence of the method without assuming heavy tails for fXf_\mathbf{X} and illustrate performance by applying the method on simulated and real data. To add stability to the solution, we apply a Tikhonov-type regularization method.

Keywords

Cite

@article{arxiv.2104.08402,
  title  = {Regularized Maximum Likelihood Estimation for the Random Coefficients Model},
  author = {Fabian Dunker and Emil Mendoza and Marco Reale},
  journal= {arXiv preprint arXiv:2104.08402},
  year   = {2021}
}

Comments

23 Pages, 13 figures