2019
DOI: 10.48550/arxiv.1904.05232
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Solving Dynamic Discrete Choice Models Using Smoothing and Sieve Methods

Abstract: We propose to combine smoothing, simulations and sieve approximations to solve for either the integrated or expected value function in a general class of dynamic discrete choice (DDC) models. We use importance sampling to approximate the Bellman operators defining the two functions. The random Bellman operators, and therefore also the corresponding solutions, are generally non-smooth which is undesirable. To circumvent this issue, we introduce smoothed versions of the random Bellman operators and solve for the… Show more

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References 21 publications
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