Graph explorer

Structural Sieves

This paper explores the use of deep neural networks for semiparametric estimation of economic models of maximizing behavior in production or discrete choice. We argue that certain deep networks are particularly well suited as a nonparametric sieve to approximate regression functions that result from nonlinear latent variable models of continuous or discrete optimization. Multi-stage models of this type will typically generate rich interaction effects between regressors ("inputs") in the regression function so that there may be no plausible separability restrictions on the "reduced-form" mapping form inputs to outputs to alleviate the curse of dimensionality. Rather, economic shape, sparsity, or separability restrictions either at a global level or intermediate stages are usually stated in terms of the latent variable model. We show that restrictions of this kind are imposed in a more straightforward manner if a sufficiently flexible version of the latent variable model is in fact used to approximate the unknown regression function.

4 nodes4 linksoverview previewStructural Sieves
4 nodes4 links
Structural Sieves4 visible / 4 total nodes / 4 links
Related contextAuthorshipTopic signalTopic signalWStructural Sievespreprint / 2022AKonrad MenzelResearcherTMachine Learning49008 worksTecon.EM938 works
PaperSignal 103 links

Structural Sieves

preprint / 2022

Open