• Title of article

    Likelihood inference in some finite mixture models

  • Author/Authors

    Chen، نويسنده , , Xiaohong and Ponomareva، نويسنده , , Maria and Tamer، نويسنده , , Elie، نويسنده ,

  • Issue Information
    دوفصلنامه با شماره پیاپی سال 2014
  • Pages
    13
  • From page
    87
  • To page
    99
  • Abstract
    Parametric mixture models are commonly used in applied work, especially empirical economics, where these models are often employed to learn for example about the proportions of various types in a given population. This paper examines the inference question on the proportions (mixing probability) in a simple mixture model in the presence of nuisance parameters when sample size is large. It is well known that likelihood inference in mixture models is complicated due to (1) lack of point identification, and (2) parameters (for example, mixing probabilities) whose true value may lie on the boundary of the parameter space. These issues cause the profiled likelihood ratio (PLR) statistic to admit asymptotic limits that differ discontinuously depending on how the true density of the data approaches the regions of singularities where there is lack of point identification. This lack of uniformity in the asymptotic distribution suggests that confidence intervals based on pointwise asymptotic approximations might lead to faulty inferences. This paper examines this problem in details in a finite mixture model and provides possible fixes based on the parametric bootstrap. We examine the performance of this parametric bootstrap in Monte Carlo experiments and apply it to data from Beauty Contest experiments. We also examine small sample inferences and projection methods.
  • Keywords
    Parametric bootstrap , Finite mixtures , Profiled likelihood ratio statistic
  • Journal title
    Journal of Econometrics
  • Serial Year
    2014
  • Journal title
    Journal of Econometrics
  • Record number

    2129583