Article ID Journal Published Year Pages File Type
5097347 Journal of Econometrics 2007 37 Pages PDF
Abstract
We consider semiparametric asymmetric kernel density estimators when the unknown density has support on [0,∞). We provide a unifying framework which relies on a local multiplicative bias correction, and contains asymmetric kernel versions of several semiparametric density estimators considered previously in the literature. This framework allows us to use popular parametric models in a nonparametric fashion and yields estimators which are robust to misspecification. We further develop a specification test to determine if a density belongs to a particular parametric family. The proposed estimators outperform rival non- and semiparametric estimators in finite samples and are easy to implement. We provide applications to loss data from a large Swiss health insurer and Brazilian income data.
Related Topics
Physical Sciences and Engineering Mathematics Statistics and Probability
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