Semiparametric estimation of Markov decision processeswith continuous state space
We propose a general two-step estimation method for the structural parameters of popular semiparametric Markovian discrete choice models that include a class of Markovian Games and allow for continuous observable state space. The estimation procedure is simple as it directly generalizes the computationally attractive methodology of Pesendorfer and Schmidt-Dengler (2008) that assumed finite observable states. This extension is non-trivial as the value functions, to be estimated nonparametrically in the first stage, are defined recursively in a non-linear functional equation. Utilizing structural assumptions, we show how to consistently estimate the infinite dimensional parameters as the solution to some type II integral equations, the solving of which is a well-posed problem. We provide sufficient set of primitives to obtain root-T consistent estimators for the finite dimensional structural parameters and the distribution theory for the value functions in a time series framework.
| Item Type | Report (Technical Report) |
|---|---|
| Copyright holders | © 2010 The Authors |
| Keywords | discrete Markov decision models, kernel smoothing, Markovian games, semi-parametric estimation, well-posed inverse problem.D |
| Departments | STICERD |
| Date Deposited | 23 Jul 2014 15:41 |
| URI | https://researchonline.lse.ac.uk/id/eprint/58187 |
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