Generalized Non-Parametric Deconvolution with an Application to Earnings Dynamics
In this paper, we construct a non-parametric estimator of the distributions of latent factors in linear independent multi-factor models under the assumption that factor loadings are known. Our approach allows estimation of the distributions of up to L(L+ 1)/2 factors given L measurements. The estimator uses empirical characteristic functions, like many available deconvolution estimators. We show that it is consistent, and derive asymptotic convergence rates. Monte Carlo simulations show good finite-sample performance, less so if distributions are highly skewed or leptokurtic. We finally apply the generalized deconvolution procedure to decompose individual log earnings from the panel study of income dynamics (PSID) into permanent and transitory components. Copyright , Wiley-Blackwell.
Year of publication: |
2010
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Authors: | Bonhomme, Stéphane ; Robin, Jean-Marc |
Published in: |
Review of Economic Studies. - Oxford University Press. - Vol. 77.2010, 2, p. 491-533
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Publisher: |
Oxford University Press |
Saved in:
Saved in favorites
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