English

Penalized Likelihood Regression in Reproducing Kernel Hilbert Spaces with Randomized Covariate Data

Methodology 2010-08-04 v1 Applications

Abstract

Classical penalized likelihood regression problems deal with the case that the independent variables data are known exactly. In practice, however, it is common to observe data with incomplete covariate information. We are concerned with a fundamentally important case where some of the observations do not represent the exact covariate information, but only a probability distribution. In this case, the maximum penalized likelihood method can be still applied to estimating the regression function. We first show that the maximum penalized likelihood estimate exists under a mild condition. In the computation, we propose a dimension reduction technique to minimize the penalized likelihood and derive a GACV (Generalized Approximate Cross Validation) to choose the smoothing parameter. Our methods are extended to handle more complicated incomplete data problems, such as, covariate measurement error and partially missing covariates.

Keywords

Cite

@article{arxiv.1008.0415,
  title  = {Penalized Likelihood Regression in Reproducing Kernel Hilbert Spaces with Randomized Covariate Data},
  author = {Xiwen Ma and Bin Dai and Ronald Klein and Barbara E. K. Klein and Kristine E. Lee and Grace Wahba},
  journal= {arXiv preprint arXiv:1008.0415},
  year   = {2010}
}

Comments

46 pages Missing data is a special case of the general theory here

R2 v1 2026-06-21T15:56:09.729Z