Title of article
Nonparametric estimation of distributions with categorical and continuous data
Author/Authors
Li، نويسنده , , Qi and Racine، نويسنده , , Jeff، نويسنده ,
Issue Information
دوفصلنامه با شماره پیاپی سال 2003
Pages
27
From page
266
To page
292
Abstract
In this paper we consider the problem of estimating an unknown joint distribution which is defined over mixed discrete and continuous variables. A nonparametric kernel approach is proposed with smoothing parameters obtained from the cross-validated minimization of the estimatorʹs integrated squared error. We derive the rate of convergence of the cross-validated smoothing parameters to their ‘benchmark’ optimal values, and we also establish the asymptotic normality of the resulting nonparametric kernel density estimator. Monte Carlo simulations illustrate that the proposed estimator performs substantially better than the conventional nonparametric frequency estimator in a range of settings. The simulations also demonstrate that the proposed approach does not suffer from known limitations of the likelihood cross-validation method which breaks down with commonly used kernels when the continuous variables are drawn from fat-tailed distributions. An empirical application demonstrates that the proposed method can yield superior predictions relative to commonly used parametric models.
Keywords
cross-validation , Density estimation , Asymptotic normality , Nonparametric smoothing , Discrete and continuous variables
Journal title
Journal of Multivariate Analysis
Serial Year
2003
Journal title
Journal of Multivariate Analysis
Record number
1557905
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