L2-density estimation under constraints

We are interested in non parametric density estimation under constraints. It generalises a previous paper which was devoted to density estimation with non-positive kernels. The resulting density approximation improves the estimation (by reducing the bias) but provides negative values. Therefore, we have proposed a projection method on the space of probability densities and an algorithm designed to generate a sample from the projected density. We present here a generalization of this work in considering several linear constraints on the estimated density. These constraints represent an a priori knowledge of the underlying density. For example, the support, some moments or quantiles of the approximated density can be set a priori by the user. We prove that the projected density on the closed and convex set of functions satisfying some the constraints has a simple and explicit form. Some simulations show that the proposed solution outperforms alternative solutions proposed in the literature.

[1]  Luc Devroye,et al.  Nonparametric Density Estimation , 1985 .

[2]  L. Devroye A Course in Density Estimation , 1987 .

[3]  L. Devroye,et al.  Nonparametric density estimation : the L[1] view , 1987 .

[4]  N. Oudjane,et al.  L/sup 2/-density estimation with negative kernels , 2005, ISPA 2005. Proceedings of the 4th International Symposium on Image and Signal Processing and Analysis, 2005..

[5]  P. J. Green,et al.  Density Estimation for Statistics and Data Analysis , 1987 .

[6]  Charles K. Chui,et al.  Constrained best approximation in Hilbert space , 1990 .

[7]  B. Presnell,et al.  Density Estimation under Constraints , 1999 .

[8]  Johannes Schoißengeier,et al.  An asymptotic expansion for , 1990 .