Artículos de revistas
A family of non-parametric density estimation algorithms
Fecha
2013-02Registro en:
Tabak, E. G. ; Turner, Cristina Vilma; A family of non-parametric density estimation algorithms; Wiley; Communications On Pure And Applied Mathematics; 62; 2; 2-2013; 145-164
0010-3640
Autor
Tabak, E. G.
Turner, Cristina Vilma
Resumen
A new methodology for density estimation is proposed. The method- ology, which builds on the one developed in [15], normalizes the data points through the composition of simple maps. The parameters of each map are determined through the maximization of a local quadratic approximation to the log-likelihood. Various candidates for the el- ementary maps of each step are proposed; criteria for choosing one includes robustness, computational simplicity and good behavior in high-dimensional settings. A good choice is that of localized radial expansions, which depend on a single parameter: all the complex- ity of arbitrary, possibly convoluted probability densities can be built through the composition of such simple maps.