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Nonparametric Density and Regression Estimation
Author(s) -
John DiNardo,
Justin L. Tobias
Publication year - 2001
Publication title -
the journal of economic perspectives
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 9.614
H-Index - 196
eISSN - 1944-7965
pISSN - 0895-3309
DOI - 10.1257/jep.15.4.11
Subject(s) - nonparametric regression , nonparametric statistics , parametric statistics , flexibility (engineering) , regression , computer science , context (archaeology) , density estimation , regression analysis , econometrics , semiparametric regression , estimation , function (biology) , statistics , data mining , mathematics , machine learning , engineering , paleontology , estimator , evolutionary biology , biology , systems engineering
We provide a nontechnical review of recent nonparametric methods for estimating density and regression functions. The methods we describe make it possible for a researcher to estimate a regression function or density without having to specify in advance a particular--and hence potentially misspecified functional form. We compare these methods to more popular parametric alternatives (such as OLS), illustrate their use in several applications, and demonstrate their flexibility with actual data and generated-data experiments. We show that these methods are intuitive and easily implemented, and in the appropriate context may provide an attractive alternative to "simpler" parametric methods.

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